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THE YEAR IN ECOLOGY AND CONSERVATION BIOLOGY, 2009
Setting Conservation PrioritiesKerrie A. Wilson, Josie Carwardine, and Hugh P. Possingham
The University of Queensland, School of Integrative Biology, St. Lucia,Queensland, Australia
A generic framework for setting conservation priorities based on the principles of clas-sic decision theory is provided. This framework encapsulates the key elements of anyproblem, including the objective, the constraints, and knowledge of the system. Withinthe context of this framework the broad array of approaches for setting conservationpriorities are reviewed. While some approaches prioritize assets or locations for con-servation investment, it is concluded here that prioritization is incomplete withoutconsideration of the conservation actions required to conserve the assets at particularlocations. The challenges associated with prioritizing investments through time in theface of threats (and also spatially and temporally heterogeneous costs) can be aided byproper problem definition. Using the authors’ general framework for setting conserva-tion priorities, multiple criteria can be rationally integrated and where, how, and whento invest conservation resources can be scheduled. Trade-offs are unavoidable in prior-ity setting when there are multiple considerations, and budgets are almost always finite.The authors discuss how trade-offs, risks, uncertainty, feedbacks, and learning can beexplicitly evaluated within their generic framework for setting conservation priorities.Finally, they suggest ways that current priority-setting approaches may be improved.
Key words: conservation prioritization; systematic conservation planning; reserve de-sign; decision theory; biodiversity; surrogates; costs; threats; vulnerability; likelihoodof success; threatened species; hotspot; focal species; uncertainty; risk; feedbacks
Introduction
Conservation activities must be prioritizedso that scarce funds and resources are used ef-ficiently and effectively to prevent long-termloss and degradation of biodiversity and eco-logical systems. A plethora of impacts arecausing a mass extinction event (Lawton andMay 1995), including habitat destruction andfragmentation, overexploitation of natural re-sources, invasive species, global climate change,and emerging diseases (Groombridge and Jenk-ins 2002). While we can attempt to increase theresources available for conservation, at presentfunding is insufficient in the context of cur-rent threats, and conservation competes with
Address for correspondence: Kerrie A. Wilson, The University ofQueensland, School of Biological Sciences, St. Lucia Brisbane, Queens-land 4072, Australia. [email protected]
other societal priorities, such as food produc-tion, human habitation, and resource extrac-tion (Abbitt et al. 2000; James et al. 2001; Balm-ford et al. 2004; Naidoo and Iwamura 2007).
Land-use allocation patterns around theworld are not favorable for biodiversity con-servation. Almost 500 million hectares of theEarth’s surface is allocated to agriculture:arable and permanent cropland is estimated tocover approximately 1500 million hectares andpermanent pasture approximately 3400 millionhectares (FAO 2008). By comparison, terres-trial protected areas cover only 1840 millionhectares (WDPA Consortium 2004). Globalspending on conservation is also far lower thanin other sectors. For example, in 2007 the to-tal annual revenue of the world’s largest non-government conservation organization, TheNature Conservancy (www.nature.org), wasone tenth of the net profit of Wal-Mart. Ata local level, expenditure on environmental
The Year in Ecology and Conservation Biology, 2009: Ann. N.Y. Acad. Sci. 1162: 237–264 (2009).doi: 10.1111/j.1749-6632.2009.04149.x C© 2009 New York Academy of Sciences.
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238 Annals of the New York Academy of Sciences
protection is often much lower than expendi-ture in other sectors. In Australia, for example,local governments receive over AUS$2.6 bil-lion in revenue for environment protection ac-tivities, which equates to only 13% of their totalrevenue, and only a fraction of that is spent onbiodiversity conservation (Australian Bureau ofStatistics 2004).
People have long set conservation priorities,with subsistence communities declaring partic-ular areas or species exempt from exploitation(Wright and Mattson 1996; Chandrashekaraand Sankar 1998). Today the scientific litera-ture documents a range of priority-setting ap-proaches (Smith and Theberge 1987; Costelloand Polasky 2004; Brooks et al. 2006; Sarkaret al. 2006). In its various forms, conservationpriority setting seeks to identify where, how, onwhat, and/or when we should act first to con-serve biodiversity efficiently, on the assumptionwe cannot do everything everywhere at once.Much of the conservation priority–setting liter-ature concerns the identification of new pro-tected areas or networks of protected areas,and this is often referred to as systematic conser-vation planning (Margules and Sarkar 2007). Inthis review, we explore a broad array of priority-setting approaches that concern not only thelocations we wish to conserve, but also the bio-logical assets we are concerned about, and theconservation actions available to increase theirchance of persistence. There are also a wide va-riety of tools to assist the identification of con-servation priorities, covering a broad spectrumfrom mathematical to intuitive.
The first aim of this chapter is to pro-vide a generic framework for setting conser-vation priorities. It is based on the principlesof classic decision theory (Clemen 1996; Elster2003). While we describe the process of set-ting conservation priorities mathematically, theterminology we have employed is flexible andthe framework reflects logical decision mak-ing. This framework encapsulates the key el-ements of any problem, such as the objective,the constraints, and our knowledge of the sys-tem. The system knowledge encompasses the
key elements of our area of interest, which maybe an entire biome, a country, or a parcel ofland (herein termed locations). The key ele-ments constitute the assets we wish to protect(a single species, a group of species, habitats,or an ecological service or function), the keythreats to these assets, the actions likely to abatethe threats, and the costs associated with theirimplementation.
The second aim of this chapter is to evaluatethe benefits and risks of allocating funds withand without considering these elements (e.g.,of allocating funds to particular assets withoutconsidering the cost of the action requiring im-plementation in order to conserve the asset in aparticular location). On the basis of our review,we conclude that while the prioritization of as-sets or locations is commonplace, prioritizationapproaches that do not consider the conserva-tion actions required to protect the assets inparticular locations are incomplete.
The third aim of this chapter is to illustratehow multiple conservation objectives can beintegrated. We discuss examples of trade-offswhen there are disparate conservation objec-tives and how trade-offs can be explicitly eval-uated within the generic framework for settingconservation priorities.
We acknowledge the challenges associatedwith the rational and efficient allocation ofconservation funds, including lack of a clearconservation objective, a paucity of biologi-cal and economic data, uncertainty about thelikely success of investments, and societal val-ues or political processes that can influenceinvestment decisions. The final aim of thischapter is to identify some opportunities forreducing these challenges when setting conser-vation priorities.
Defining a ConservationPrioritization Problem: What
Are the Key Elements?
Conservation prioritization problems can bestructured as classic optimization problems,
Wilson et al.: Setting Conservation Priorities 239
with an objective function, mathematicaldescriptions of our knowledge of the systemand the state variables, control variables, con-straints, and system equations (Possingham et al.2001; Wilson et al. 2007). In systematic con-servation planning there have been two broadclass of prioritization problem—the minimum-set and maximal-coverage problems—definedmathematically in Box 1.
In all problem formulations, the objectivefunction reflects our conservation goal and hasan explicit measure of performance. In a con-servation context we may seek to maximize thenumber of species conserved to an adequatelevel, or to minimize the number of speciesthat are expected to go extinct over the next100 years. Often there is more than one ob-jective. In almost all circumstances the strategythat optimizes one objective will not optimizeother objectives, which means that compro-mises must be made. Objectives can be com-bined into a single objective using a weightedsum or some other function; however, the useof weights presents challenges that we discusslater.
What we are required to know about the sys-tem (the system knowledge) will depend on theparticular problem at hand—in a conservationprioritization context we would want to knowwhat the assets are, what the threats are to theseassets, what actions can be taken to abate thesethreats or otherwise improve the state of the as-sets, and the cost of carrying out those actions,which may vary over the area of interest andthrough time. We may also require additionalknowledge, such as the uncertainty associatedwith key parameters and whether some out-comes are random or stochastic. The state vari-ables represent the assets in the area of interest.The assets might be biological (such as habi-tat types, populations of threatened species, thedistribution of invasive species, and ecosystemprocesses) or nonbiological (such as the loca-tions of landholders that are amenable to habi-tat restoration or the distribution of water flowsthrough a catchment).
The control variables reflect the things wecould do. In the context of conservation prior-
itization we control how much money or re-sources we direct toward different conserva-tion actions in any location and at a particu-lar time. These control variables will directlyor indirectly influence the states of our assets.The constraints limit the choice of control vari-ables. In maximal-coverage prioritization prob-lems (Box 1) constraints may include a budget,how many parcels of land can be restored eachyear due to operational and seasonal limita-tions, or may reflect the area of land that canbe conserved annually. In minimum-coverageproblems (Box 2) the constraints may repre-sent the minimum amount of conservation thatwe aim to achieve for each asset. For exam-ple, we could have a target amount of eachspecies requiring habitat protection or a tar-get for the frequency of flooding required ina river basin (an ecosystem process asset). Thesystem equations reflect our understanding ofhow our state variables (and also our objectivefunction) change as a function of each other,system parameters (such as the chance an areais cleared for urbanization), and the controlvariables. The overall aim is to find a solutionthrough manipulation of the control variablesthat has the highest possible value of the objec-tive function subject to our constraints. Whileoptimal solutions might be desired, multiplenear-optimal solutions are often sought for thesake of flexibility and the ease of calculation andcommunication.
The conservation prioritization problem canbe described mathematically. A general versionof the conservation prioritization problem sub-ject to a annual budget, bt , is described below.Let xjkt be the amount of money to be spenton action k in location j in year t. For example,one possible action might be to spend $10,000removing an invasive species from a single lo-cation in any one year. Each year the cost ofall the actions across all the locations must beless than our annual budget, so we have theconstraint:
N∑
j =1
P∑
k=1
x jkt ≤ bt for every year t . (1)
240 Annals of the New York Academy of Sciences
where N is the number of locations and P isthe number of possible actions. Determiningour budgetary constraints is generally straight-forward, although obtaining data on the costsof different conservation actions in differentlocations can be challenging (Naidoo et al.2006). Formally, we have the further constraintthat xjkt is greater than zero, since we can-not spend negative dollars on a conservationaction.
Next we need a set of states in every locationand time, yijt . For example, in each location andin each year we might need to know the size ofa population of a threatened species, the per-centage of plants being adequately pollinated,the condition of a particular habitat type, orthe genetic diversity within a population. Ourchoice of state variables will depend on manyissues, such as whether our state variables areassets (e.g., the population size of a threatenedspecies) or whether the state variable influencesour assets (e.g., the population size of an inva-sive species). Our objective will be to maximizesome weighted combination of the state vari-ables. As we describe later, choosing appropri-ate weightings can be difficult, but we assumefor now that weights can be derived. The ob-jective is to maximize over a time frame, T , ofinterest:
M∑
i=1
N∑
j =1
T∑
t=1
w ijt f (y. . .) (2)
where wijt is a weighted value assigned to theamount of state variable (or asset) i, in placej, at time t. In principle the value we assignto any asset at any time and location can be acomplex function of all the assets in the systemf (y. . .). In this approach, money itself can bea state variable and we can replace the annualfunding constraint by a dynamic accountingequation. Finally, we need a series of dynamicmodels that show how our actions and all thestate variables interact to move, invariably ina stochastic way, the whole system from onestate to another through time. Ultimately thewhole problem is complex, which is why more
specific and tractable versions of the generalconservation prioritization problem exist (seeBox 1).
Box 1. Mathematical Definitionof Two Broad Class of
Conservation PrioritizationProblem: The Minimum-Setand the Maximal-Coverage
Problems
Minimum-Set Problem
The objective of the minimum-set problem isto minimize the resources expended while meetinga given set of conservation targets (Pressey 2002).Each location j has a cost cj and each asset i hasa target ri . The variable xj equals 1 if location j isselected for investment, otherwise it equals 0. Thecontribution to the conservation of asset i by theselection of location j is contained in a matrix withelements aij . The objective is to minimize the cost:
∑
j ∈P
c j x j
subject to the constraint that the targets are met:∑
j ∈P
a ij x j ≥ r i
for every asset i.There are simple and complex versions of the
minimum-set problem. All locations might be as-sumed to have equal cost or we can allow each loca-tion (or location–action combination) to reflect theactual monetary or social cost. Each asset may alsobe described in different currencies (e.g., numberof individuals, extent of occurrence, probability ofoccurrence) and individual targets can be set foreach asset. If more than one action is under con-sideration, we can set asset targets for each actionand in each location, for example, we might aim torepresent 20% of the range of a species in a strictprotected area and 30% in an area managed forsustainable-resource extraction.
Maximal-Coverage Problem
The objective of the maximal-coverageproblem is to maximize some measure of
Wilson et al.: Setting Conservation Priorities 241
“benefit” (in a simple case, this might be the num-ber of targets met for our assets), given a fixed bud-get or resources that can be expended (Church andReVelle 1974). That is, the objective is to maximize
∑
i∈I
f ( y i (x .))
subject to∑
j ∈J
c j x j ≤ b
where cj and xj are as previously defined, and yi isthe amount of feature i conserved in reserve systemx., and f is a function that turns that into a value.The maximum available expendable budget is b,
which is in the same units as cj . Like the minimum-set coverage problem, there are multiple variationsto the maximal-coverage problem. The problemmay be solved without applying targets and thebudget may or may not be sufficient for meetingall targets. While budgets are typically finite, theyare not necessarily fixed and the budget can be up-dated through time if more or fewer funds becomeavailable. In the simplest case, if the target allocatedfor asset i is achieved, yi equals 1, and otherwise itequals 0. Alternatively, the benefit can be measuredby a set of functions representing the incrementalgains in the conservation of each asset per dollarinvested. The functions relating benefit to the costsof acquiring these benefits can be linear, meaningthat benefits are continuous, or curved to repre-sent situations where benefits diminish or increasewith each dollar invested. Assets can also be differ-entially weighted to emphasize investment in thosethat we value highly (e.g., assets that are locally rareor threatened) (Arponen et al. 2005, 2007).
Assets
In systematic conservation planning, the eco-logical purpose of a reserve system is to sustainrepresentative samples of the full range of biodi-versity and ecosystem processes of the region inwhich it lies (Margules and Pressey 2000). Typi-cally, conservation prioritization analyses focuson (1) protecting particular species (e.g., threat-ened, umbrella, or flagship species; see later inthis chapter), (2) protecting areas of high speciesrichness or areas with high endemism, and/or(3) protecting functioning ecosystems and theirassociated ecosystem processes. Knowledge of
our assets is therefore a key component of aconservation prioritization problem—these arethe species or other facets of biodiversity thatwe wish to conserve. Data are often incom-plete, however, even for well-known taxa suchas birds and mammals, and worse for lesser-known taxa like insects and fungi. Our knowl-edge of ecosystem processes is perhaps the leastcomplete (Pressey et al. 2007). This paucity ofdata forces us to use biodiversity surrogates inconservation priority setting.
The surrogates (such as using birds as a sur-rogate for all vertebrates) are the state variablesin the objective function. Proposed surrogatesinclude well-known taxonomic groups, habitattypes, and ecological classifications of land andwater (Ferrier et al. 2000). The level of supportin the literature for surrogates and their abil-ity to represent other elements of biodiversityare variable (Reyers and van Jaarsveld 2000;Beger et al. 2003; Faith et al. 2004). Surro-gates have been found to perform well in somecases (Howard et al. 1998; Oliver et al. 1998)and poorly in others (van Jaarsveld et al. 1998).Rodrigues and Brooks (2007) found cross-taxonsurrogates to be more effective than surrogatesbased on environmental data, particularly en-vironmental surrogates that are based only onabiotic data.
Many conservation plans involve settingtargets—amounts of a biodiversity asset atwhich we feel the asset is conserved. The ben-efits gained for each asset through investmentin their conservation can be quantified with orwithout use of targets. Targets can be set in amultitude of ways and can, for example, reflectthe percentage of historical extent of a vegeta-tion type or a minimum viable population sizefor a species. The development of targets canbe informed by ecological theory and empir-ical knowledge in order to accommodate therequirements of species for their persistence,for example, by accounting for informationon life history characteristics, habitat connec-tivity requirements, and threatening processes(Burgman et al. 2001). Targets that are gen-eralized for sociopolitical purposes (such as,
242 Annals of the New York Academy of Sciences
protect 10% of every habitat type) have limitedscientific basis and should not be interpreted asthe minimum amount of habitat requiring pro-tection in order to ensure species persistence(Soule and Sanjayan 1998; Noss 2004). Theuse of targets is implicitly based on the assump-tion that there is a critical level of protectionrequired and until that level is achieved thereare no benefits, or that the benefits accrue lin-early (Arponen et al. 2005; Carwardine et al.In Press). The relationship between the invest-ment and the benefit derived is of course morecomplicated and can take a variety of shapes(see later). In general the per-unit benefit of in-creasing the level of a protection of an asset willdecline, that is, benefit functions should haveslopes that decrease, and hence show dimin-ishing returns (Davis et al. 2006; Wilson et al.2006).
Threats
We need to understand the threats to bio-diversity in order to evaluate the risk of losingspecies or habitats if no conservation action istaken; that is, the vulnerability of different lo-cations and/or assets (Wilson et al. 2005). It isan inefficient use of funds to invest in locationswhere the risk of exposure to threats is low orwhere there are no biodiversity assets impactedby a particular threat. Ignoring threats in con-servation prioritization is only justifiable whenthere is enough money to abate all threats atonce, which is rarely the case. Incremental con-servation investment is much more commonand during a protracted process of protection,biodiversity (or the surrogates for biodiversity)might be lost or degraded.
Threats are highly variable spatially andthere are numerous ways to evaluate the vul-nerability of different locations and the assetsthey contain (Wilson et al. 2005). Furthermore,there are numerous ways for how informationon vulnerability might be used to identify pri-ority assets or locations for conservation invest-ment (Redford et al. 2003; Brooks et al. 2006). Inthe general conservation prioritization problem
outlined earlier, threats can be included as an-other state variable that, in general, has a nega-tive impact on state variables that we value. Un-der such circumstances the state variable mightbe the size of an invasive-species populationor the rate of sea-level rise due to global cli-mate change. At a local scale, the former threatcan be mitigated but the latter cannot with-out unrealistic expenditure. Other threats thatmay be prohibitive to mitigate include diseasesfor which there is no known cure, a volcaniceruption, or an invasive species for which aneffective control mechanism has not yet beenidentified. For other threats there may, in the-ory, be an action that stops the threat, but thescale and cost of implementation might be pro-hibitive (e.g., a global reduction of fossil-fuel useto reduce sea-level rise).
Costs
For all known actions there is an associatedcost and impact on assets of concern. The costof each action might reflect the cost of land pur-chase (Ando et al. 1998; Polasky et al. 2001), thecost of management (e.g., the cost of control-ling an invasive species) (Balmford et al. 2003;Wilson et al. 2007), opportunity costs (i.e., theprofits that are forgone when a conservation ac-tion is undertaken) (Naidoo and Iwamura 2007;Carwardine et al. 2008a), stewardship costs (i.e.,the compensation that a landowner is willing toaccept to manage their land for conservation)(Carwardine et al. 2008b), social costs (e.g., thenumber of people that will be disadvantagedby the creation of a protected area (Luck et al.2004), transaction costs (i.e., the costs associ-ated with negotiating an economic exchange orestablishing a conservation program) (Naidooet al. 2006), and the costs of information acqui-sition and planning (e.g., the costs associatedwith undertaking surveys or conducting priori-tization analyses) (Balmford and Gaston 1999;Gardner et al. 2008; Grantham et al. 2008).
The number of papers presenting economi-cally grounded conservation priority setting ap-proaches has grown (Ando et al. 1998; Balmford
Wilson et al.: Setting Conservation Priorities 243
et al. 2000; Polasky et al. 2001; Stewart et al.2003; Moore et al. 2004; Stewart and Possing-ham 2005; Wilson et al. 2006; Wilson et al. 2007;Bode et al. 2008; Carwardine et al. 2008a,b;Klein et al. 2008), as conservation scientistsrecognize the benefits of explicitly consideringthe spatially variable costs of conservation. Ac-counting for the costs of conservation activitiesis essential for post hoc evaluations of whethercertain actions were a cost-effective use of re-sources (Ferraro and Pattanayak 2006; Halpernet al. 2006). There is also increasing evidenceof the importance of explicitly incorporatingeconomic data in determining priorities (Bodeet al. 2008). Studies have shown that conserva-tion plans can be up to 10 times more efficient(Polasky et al. 2001; Naidoo et al. 2006), mean-ing that we can make better use of the limitedfunds available for conservation. Conservationcosts typically vary by two to four orders ofmagnitude more than biodiversity data, andconservation outcomes have been found to bemore sensitive to cost data than biodiversitydata (Bode et al. 2008). Such issues are of pri-mary importance in a dynamic and uncertainworld, and are particularly relevant in the con-text of fluctuating property markets where costscan vary stochastically and unpredictably. Thisalso has important implications for the typesof data that are prioritized for collection—dataon costs has been identified as an immediatepriority (Naidoo et al. 2006; Bode et al. 2008).
To undertake full-cost accounting we mustconsider immediate and long-term costs. Whilethe cost of land purchase for a new protectedarea is incurred immediately, the cost of manag-ing the protected area will continue indefinitely.The simplest approach is to endow manage-ment costs in perpetuity and use discountingrates for costs that are incurred over time toreflect the fact that money spent now is worthmore than money spent in the future. Thereare also interdependencies and interactions be-tween the costs of different conservation actionsthat should be accounted for. Take for exam-ple two conservation actions: predator controland fire management. Predator-control man-
agement may cost $x/ha, and fire manage-ment may cost $y/ha; however, carrying outthese actions together may equate to less than$x + y/ha, as transportation and labor costscan be shared. Or to fit with the general ver-sion of the conservation prioritization problem[Eqs. (1) and (2)], if we spend $y/ha on firemanagement and $x/ha on predator control,the benefits are likely to be greater than under-taking them separately.
Overcoming the tendency for costs to be seenas secondary to biological data in conserva-tion priority setting represents a major hurdlefor conservation science (Odling-Smee 2005).This hurdle exists because, first, obtaining ac-curate cost data at an appropriate resolution ischallenging and a frequently neglected activity(Naidoo et al. 2006). Second, biologically fo-cused conservationists can be hesitant to allownonbiological factors to influence the allocationof scarce resources, for fear that poorer conser-vation outcomes would result from “giving up”on species or ecosystems that are expensive tosave (Pimm 2000; Bottrill et al. 2008). Finally,the general lack of problem definition can be acontributing factor: when locations are priori-tized without an action in mind it is impossibleto account for the cost of the action.
Most current conservation priority settingdoes not follow the basic structure outlined inthis section. A general tendency is for conserva-tion scientists and practitioners to seek to pri-oritize locations or assets, without consideringthe overall objective and the actions requiredin different locations to conserve the assets. Inshort, it is common to solve only part of the con-servation prioritization problem, because theproblem itself is not properly defined.
Prioritizing Assets: How MuchMoney Should We Invest in theConservation of Pandas vs. the
Conservation of Snails, and Is Thisthe Right Question to Ask?
Much conservation effort is focused onparticular species. These species might be
244 Annals of the New York Academy of Sciences
keystone, umbrella, flagship, indicator, or fo-cal species (Table 1). Species can make a log-ical target for conservation investment due totheir public appeal (and raising public aware-ness can increase the pool of funds availablefor conservation), the availability of reasonable-quality data, and the lowered monitoring andevaluation costs resulting from a focus on fewerassets (Mace et al. 2007). It has been acknowl-edged that setting priorities based on a subsetof species can be prone to bias, and the choiceof species is problematic because many ofthe assumed ecological relationships are oftenuntested (Simberloff 1998; Lindenmayer et al.2002) (Table 1). Single-species managementalso ignores the suite of ecological processesthat maintain and sustain such species, and themanagement of one species may conflict withthe management of another (Simberloff 1998).
Many countries, states, and agencies pri-oritize funds for species recovery by focusingon threat status and prioritizing investment inthose species at most risk of extinction. Thethreat status might be determined by the In-ternational Union for Conservation of Natureand Natural Resources (IUCN) red-listing cri-teria, which use quantitative rules to assign arisk of extinction (IUCN 2003). Such an ap-proach is supported in many countries by leg-islated requirements for the protection of en-dangered (and especially charismatic) speciesand has a strong moral and ethical basis. It alsohas important implications for the availabilityand use of funds for biodiversity conservation.In Australia, for example, at a national level,critically endangered and endangered speciesare given preference for conservation spending(Possingham et al. 2002). Although not explic-itly stated, this approach assumes that a focuson threatened species will result in the fewestextinctions (Possingham et al. 2002; Bottrill et al.2008).
Using a threatened species as a surrogate forother species or habitats may be inappropri-ate if the presence of a threatened species doesnot indicate habitat of good condition or that isof high value for other species (Rubinoff 2001;
Possingham et al. 2002). A sole focus on threat-ened species may also result in the inefficientuse of funds, and an inefficient investment of re-sources can entail substantial opportunity costs.Imagine, for example, if securing the mostendangered species will cost millions of dol-lars with limited collateral benefits, while sev-eral less endangered taxa could be secured bya single, comparatively cheaper conservationaction.
An example of a conservation program fo-cused on a single threatened species is that ofthe California condor, Gymnogyps californianus.Over 20 years, US$35 million was invested inthe California condor recovery and release pro-gram, increasing the number of individuals inthe wild from zero to 68 by 2002 (Alagona 2004)to more than 150 in 2008 (Walters et al. 2008).Currently US$5 million is spent annually onthe project (Walters et al. 2008). Most fund-ing for this species’ conservation was from Cal-ifornia or Oregon-based donors, particularlythose focused on “birds of prey” (e.g., Pere-grine Fund), along with the United States Fishand Wildlife Service. Given the largely non-fungible nature of the funds available for itsconservation, it is likely that this condor pro-gram is a cost-effective use of conservationfunds. It is also likely that the species wouldhave gone extinct without a dedicated conser-vation program. However, without evidence tothe contrary, we assume that the relative cost-effectiveness of this investment and the asso-ciated opportunity costs in terms of speciesthat might have otherwise benefited were notassessed a priori (Walters et al. 2008). Whilethe conservation achievements of the Califor-nia condor project should not be undervalued,it is possible that the dollars allocated to thecondor could have ensured the persistence ofmany more species, particularly if a long-termand global view is taken.
Setting priorities primarily based on howthreatened a species is reflects poor prob-lem formulation. An assessment of threatstatus reveals the urgency of conservationintervention—it does not provide information
Wilson et al.: Setting Conservation Priorities 245
TABLE
1.
Com
mon
Type
sof
Spec
ies
Use
din
Sett
ing
Con
serv
atio
nPr
iori
ties,
with
aSu
mm
ary
ofth
eSt
reng
ths
and
Wea
knes
ses
ofEa
chA
ppro
ach
Spec
ies
type
Just
ifica
tion
Key
refe
renc
esA
nex
ampl
eSt
reng
ths
Wea
knes
ses
Key
ston
eC
hang
esin
the
popu
latio
nof
the
keys
tone
spec
ies
will
have
ala
rge
impa
cton
othe
rsp
ecie
s
(Pai
ne19
69;P
ower
etal
.19
96)
Cas
sow
ary
(Cas
uari
us
casu
ariu
s)E
colo
gica
lmea
ning
The
iden
tity
ofke
ysto
nesp
ecie
sm
ayno
tbe
know
nw
ithce
rtai
nty
and
perc
eive
dre
latio
nshi
psar
ela
rgel
yun
test
edU
mbr
ella
Con
serv
atio
nof
the
umbr
ella
spec
ies
will
ensu
reth
epe
rsis
tenc
eof
othe
rsp
ecie
sdu
eto
thei
rha
bita
tre
quir
emen
ts
(Shr
ader
-Fre
chet
tean
dM
cCoy
1993
;Rob
erge
and
Ang
elst
am20
04)
Jagu
ar(T
apir
uste
rres
tris
)E
colo
gica
lmea
ning
.Pe
rcei
ved
rela
tions
hips
are
larg
ely
unte
sted
.The
requ
irem
ents
ofon
esp
ecie
sm
ayno
trefl
ectt
hato
fot
hers
Fla
gshi
pC
hari
smat
icsp
ecie
sth
atw
illga
rner
publ
icat
tent
ion
and
finan
cial
supp
ort
(Shr
ader
-Fre
chet
tean
dM
cCoy
1993
)G
iant
pand
a(A
ilur
opod
a
mel
anol
euca
)Im
prov
edpu
blic
supp
ort
for
cons
erva
tion
May
notr
eflec
tloc
alpr
iori
ties
orva
lues
and
unlik
ely
tore
flect
the
cons
erva
tion
urge
ncy
ofot
her
spec
ies
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cato
rC
hang
esin
the
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nof
thes
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ecie
sre
flect
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viro
nmen
talc
hang
e
(Lan
dres
etal
.198
8;N
oss
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lyw
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nge
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sual
impa
cts
and
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exec
olog
ical
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ract
ions
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lspe
cies
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ies
with
high
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itivi
tyto
the
dom
inan
tthr
eats
and
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stri
butio
nre
flect
sth
esp
atia
l,co
mpo
sitio
nal,
and
func
tiona
latt
ribu
tes
that
shou
ldbe
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enti
nth
ela
ndsc
ape
(Lam
beck
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;L
inde
nmay
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al.
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olf(
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islu
pis)
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flect
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nser
vatio
nco
ntex
t
Cho
ice
ofsp
ecie
sm
aybe
bias
edan
dda
tade
pend
ent
246 Annals of the New York Academy of Sciences
about the immediate and ongoing cost of con-serving the species, the likelihood the conserva-tion effort will work, and the associated benefitsto other assets. If, on the other hand, we identifyand prioritize actions to abate the key threatsto the assets that we value, then we are im-mediately drawn to a discussion of what thoseactions protect, what the costs and likelihood ofsuccess of these actions are, and whether the ac-tions are socially and politically feasible. Josephet al. (In Press-b) provide a rational approach forprioritizing investments in species conservation(Box 2). With some added complexity, this ap-proach could be used to evaluate the overallbenefit of undertaking each action, in termsof the provision of collateral and incidentalbenefits.
Box 2. Prioritizing Projects forThreatened Species
Conservation
Joseph et al. (In Press-b) provide a decision the-oretic approach for choosing between projects (i.e.,bundles of actions required to secure a threatenedspecies) that aim to conserve species in a region.The approach ranks each project (i) by its cost-efficiency (Ei ), calculated as the product of thebiodiversity benefit (Bi ), species value (Wi ) andthe probability of success (Si ) divided by the cost(Ci ):
E i = Bi × Wi × Si
Ci
Given a fixed budget for management of threat-ened species, the top-ranking projects are selecteduntil the budget is expended. Thus, the approachis similar to a maximal-coverage problem (with-out complementarity) (Box 1); where the set ofprojects selected maximizes the total number ofspecies secured within a total budgetary constraint(K ).
∑
i
C i ≤ K
This prioritization approach may be appliedat any scale. Species values may be economic,social, biological, or political (Faith 1994; Vane-
Wright et al. 1994; Rodrıguez et al. 2004; Isaacet al. 2007; Marsh et al. 2007), or species may beconsidered equal. The algorithm provides a nearperfect greedy solution to the Knapsack problem(Martello and Toth 1990; Weitzman 1998; Hart-mann and Steel 2006).
Joseph et al. (In Press-a) apply their “ProjectPrioritization Protocol” (PPP) to explore resourceallocation for managing the threatened species ofNew Zealand. This represents the first real appli-cation of cost-effective resource allocation for themanagement of multiple threatened species.
While the approach is quantitative, rational,and repeatable, it can explicitly explore the subjec-tive elements to conservation priority setting wherethreatened species are concerned. In the case ofprioritizing resources for New Zealand’s threat-ened species, the authors investigated the conse-quences of valuing species. Species were weightedby their taxonomic distinctiveness and comparedwith a scenario where species were valued equally.A trade-off exists between funding the manage-ment of a greater number of the most cost-efficientand least risky projects and funding fewer projectsto manage the species of higher value. Their appli-cation of the PPP to 32 of New Zealand’s threat-ened species resulted in far better outcomes (i.e., agreater number of species expected to be secure)than by the commonly used approach of rank-ing projects by the threat status of species that theprojects aim to protect.
Prioritizing Locations: How Do WeIdentify a Biodiversity Hotspot or a
New Protected Area, and Is Thisthe Right Question to Ask?
A number of approaches are available forprioritizing locations to conserve biodiversity(Table 2). These approaches have also lever-aged a substantial amount of money for con-servation, with biodiversity hotspots alone mo-bilizing at least US$750 million of funding(Brooks et al. 2006). The approaches reviewedin Table 2 are not exhaustive, although theyare representative of the range of approachescurrently in use.
Locations are typically prioritized usingsome measure of biodiversity importance (e.g.,
Wilson et al.: Setting Conservation Priorities 247TA
BLE
2.
Diff
eren
tPr
iori
tizat
ion
App
roac
hes
Use
dto
Iden
tify
Prio
rity
Loca
tions
∗
Con
serv
atio
nH
owin
form
atio
nC
hara
cter
istic
sPr
iori
tisat
ion
plan
ning
onvu
lner
abili
tyof
typi
cal
appr
oach
prin
cipl
eC
rite
ria
Key
refe
renc
esis
used
prio
rity
loca
tions
Bio
dive
rsity
hots
pots
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plac
eabi
lity
and
vuln
erab
ility
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esho
ldsf
oren
dem
ism
(≥1,
500
ende
mic
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tspe
cies
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tatl
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(≥70
%of
orig
inal
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tate
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thas
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ity(M
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icke
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ither
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men
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biod
iver
sity
area
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arity
Thr
esho
lds
base
don
the
popu
latio
nsi
zeof
glob
ally
thre
aten
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dre
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cted
-ran
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net
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hpr
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ion
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oach
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mm
ariz
edin
term
sof
the
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erva
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prin
cipl
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ific
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ria
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tions
are
also
sum
mar
ized
.
248 Annals of the New York Academy of Sciences
irreplaceability, rarity, adequacy) and/or ameasure of threat or vulnerability, althoughdifferent priority locations for conservation in-vestment are typically identified (Redford et al.2003; Brooks et al. 2006). Where differencesoccur they are likely due to the application ofdifferent data, analysis at different spatial scalesor resolutions, or due to differing institutionalvalues, constraints, and associated objectives.
One important distinguishing factor iswhether the approach for prioritizing locationsincorporates the principle of complementar-ity; that is, whether it allows for the selec-tion of areas that complement one another interms of the assets conserved (Justus and Sarkar2002). Some approaches evaluate sets of loca-tions on the basis of their collective representa-tion of biodiversity assets such that the wholeis not merely the sum of the parts. Hotspot ap-proaches sidestep the issue of complementarityby focusing on endemic species (complementar-ity is not relevant when there is no overlap in as-sets between locations), and scoring approachesignore complementarity meaning that they willbe inefficient when protection of multiple assetsis sought (Smith and Theberge 1987; Presseyand Nicholls 1989; Possingham et al. 2006).
Another important distinguishing factor isthe way each approach integrates informa-tion on vulnerability (Table 2). At one endof the spectrum lies the identification of en-demic bird areas (EBAs), which does not em-ploy information on vulnerability, but focuseson rare or restricted-range species (although,see Caldecott et al. 1996). In contrast, someapproaches place high importance on areas ofboth high vulnerability and high biodiversityvalue (e.g., biodiversity hotspots), and other ap-proaches give priority to areas with low vulner-ability and high biodiversity value (e.g., highbiodiversity wilderness areas).
Whether vulnerable areas are given prefer-ence or avoided depends upon the objectiveof the priority-setting approach and whetherthe threat is perceived to be stoppable or un-stoppable. For example, the aim of the vulner-ability assessment employed in the biodiversity
hotspots approach is to highlight the urgencyfor conservation action, as without rapid actionthe habitat loss to date in these hotspots threat-ens the remaining biodiversity (Mittermeieret al. 1998). In contrast, the global 200 ecore-gions aim to achieve the greatest long-term rep-resentation of biodiversity, and hence typicallyprioritize locations that are not vulnerable (Din-erstein et al. 2000; Groves et al. 2002), althoughin some cases high-risk areas might be soughtif they are important for representation. Gen-erally, using this approach, each ecoregion isranked in terms of its suitability for conserva-tion, prioritizing areas with low human use, andconversion of natural land cover on the assump-tion that these areas will be cheaper to manageand that assets in these areas will likely havea higher probability of persistence (Abell et al.1999; Ricketts et al. 1999; The Nature Con-servancy 2000; Groves et al. 2002). A similarrationale is employed in identifying wildernessareas (Sanderson et al. 2002). Future threats areoften also analyzed in the ecoregional planningapproach to gauge the urgency of conserva-tion actions, but typically after the candidatepriority areas have been identified (Olson et al.1998; Dinerstein et al. 2000).
While it is clear that there are differencesbetween priority-setting approaches in termsof how information on vulnerability is used,there is no simple rule as to whether favoringor avoiding vulnerable areas provides the bestoutcomes for biodiversity conservation. Theremight be logical merit in avoiding vulnerableareas if the probability of success in an areaunder high threat is low if conservation invest-ment in these areas will stimulate social or polit-ical conflict and accelerate further biodiversityloss. Nonetheless, when areas of high biodiver-sity value are threatened, then vulnerable areasmust be allocated high priority in order to avoidbiodiversity loss.
Most approaches do not provide a sequenc-ing of locations for conservation investmentand simply identify locations as either a pri-ority or not. In these cases, additional deci-sions are needed to determine the order that
Wilson et al.: Setting Conservation Priorities 249
each location must be invested in. Anotherimportant distinguishing factor between ap-proaches is whether or how the costs of conser-vation are considered. No approach explicitlyaccounts for the costs of conservation in eachlocation (Brooks et al. 2006), although conserva-tion organizations are actively pursuing meth-ods and data to do so (Murdoch et al. 2007;Wilson et al. 2007; Bode et al. 2008).
The conundrum of how to prioritize invest-ments through time in the face of threats (andalso spatially and temporally heterogeneouscosts) can be solved by proper problem defi-nition. Using the general framework for settingconservation priorities outlined earlier in thechapter (Eqs. 1 and 2), we can rationally in-tegrate multiple criteria and devise schedulesof where and when to invest conservation re-sources (Costello and Polasky 2004; Meir et al.2004; Drechsler 2005; Wilson et al. 2006).
The majority of the prioritization ap-proaches outlined in Table 2 comprise the anal-ysis of scores or the use of thresholds. Scoringsystems can be broadly defined as any approachfor evaluating or ranking options (assets, loca-tions, actions) based on summing the weightedscores for a number of criteria (e.g., global 200ecoregions). Multiple Criteria Analysis is a for-mal scoring approach developed for operationsresearch in the 1940s and has been applied innatural resource management and for the con-servation of biodiversity (Fernandes et al. 1999;Hajkowicz et al. 2000; Villa et al. 2002; Men-doza and Martins 2006; Moffett and Sarkar2006). The approach integrates disparate andcompeting objectives (see the section on trade-offs later in this chapter) and captures the pref-erences of stakeholders by allowing them tocontrol the relative weights given to each crite-rion. Criteria can be diverse and may includebiodiversity importance, fishing value, and eco-tourism potential.
There are, however, challenges associatedwith weighted scoring systems. For example,there can be subjectivity associated with howmuch weight to be given to different crite-ria. As a result, scoring systems are suscep-
tible to manipulation by preferentially mod-ifying weights according to user preferencesfor specific outcomes. Because each option isscored independently of other options, the av-erage reigns—low values in a few criteria canoverwhelm high values in a single criterion.Thus, weights are not necessarily reflected inthe outcomes. There can also be challengesin combining scores for criteria that have dif-ferent currencies. Combining the scores for“apples and oranges” to obtain a final over-all score can obscure useful information held inthe individual scores obtained for the separatecriteria.
Thresholds, as opposed to targets, are mea-sured at an individual site level. For exam-ple, a threshold may specify that priority lo-cations must have at least three threatenedspecies or be at least 50% intact. Thresholdmethods, such as biodiversity hotspots (Myerset al. 2000), have the advantage of being easyto communicate, but the simplicity comes ata price. If a location meets all but one crite-rion, then it would fail to be prioritized, andlocations that are prioritized because they ex-ceed a threshold by a small degree are con-sidered of equal value to a location that ex-ceeds a threshold by a large amount. Similarto weights in scoring methods, it is difficult torationally determine the value of thresholds,even though they have such a dramatic effecton the prioritization outcome.
Conservation prioritization, regardless of theapproach employed (e.g., ecoregional planning,biodiversity hotspots, etc.), is scale-dependent.Given perfect knowledge, it would always bemore efficient to prioritize a range of conser-vation actions at a fine resolution, even on aglobal scale. While comprehensive global datasets on biodiversity values, threats, and costsare improving (Hoekstra et al. 2005; Orme et al.2005; Ceballos and Ehrlich 2006; Naidoo andIwamura 2007; Naidoo et al. 2008; Underwoodet al. 2008), data that are available at a globalscale are still typically sparse and of varyingquality. At local scales, we are more likely tobe equipped with data to guide the choice of
250 Annals of the New York Academy of Sciences
conservation actions. Rouget et al. (2003), forexample, analyzed threats at the scale of theentire Cape Floristic Province and the scale ofthe composite Algulas Plain. The coarser scaleanalysis identified the broad priorities for con-servation, whereas the finer scale assessmentallowed for the analysis of more detailed andcomprehensive data sets but did not providean evaluation of the broader conservation con-text. Therefore the identification of broad pri-ority locations, particularly in data-poor areas,may help refine the geographic extent withinwhich specific actions must be identified, eval-uated, prioritized, and applied to suit localconditions.
Prioritizing Actions: Should WeRemove Weeds, Buy Land, PlantTrees, or Install Pollution Traps,
and Is This the RightQuestion to Ask?
The creation of protected areas has tradi-tionally been the primary action to achieveconservation outcomes, and is often used im-plicitly as a surrogate for the broader suiteof conservation interventions available to pro-tect biodiversity (Margules and Pressey 2000;Chape et al. 2005). Conservation practitionersof course routinely invest in a diverse array ofactivities such as fire management, invasive-species control, and revegetation, either in pro-tected areas, or on government or privatelyowned land. In many places land acquisition isnot feasible, and neither appropriate nor cost-effective (Pence et al. 2003; Stoneham et al.2003; Possingham et al. 2006; Carwardine et al.2008a). More recent approaches to conserva-tion priority seek to prioritize between multi-ple actions (and locations) to achieve conser-vation objectives. Some approaches are alsodynamic, capable of prioritizing actions tem-porally as well as spatially. In this section wediscuss and illustrate by example some ap-proaches to prioritizing multiple conservationactions.
Multiple Zoning of Land and Sea
Much traditional conservation land-useplanning has focused on a binary decision-making framework, where the landscape orseascape is allocated to either protected or un-protected status. Realistically, there is a range ofland (or sea) uses, which contribute differentlyto biodiversity conservation and have differentcosts of implementation (Box 3). We need a lotmore information to zone an area for multi-ple uses. At a minimum, we need to know thecontribution that putting each area into eachzone will make to the conservation of everyasset. This contribution could be asset-specificor constant across all assets. We also need toknow the possible zone transitions and the costof each transition. In more advanced scenar-ios, there may be desired spatial relationshipsbetween zones.
Box 3: Land-Use Zoning inTropical Forest Regions
Tropical rain forest habitat is used for a diver-sity of land uses, ranging from protected areas toproduction forests. Each alternative land use con-tributes differently to the conservation (or destruc-tion) of biodiversity. Some land uses provide habitatthroughout all levels of forest strata, along with adiversity of food sources for fauna species occupy-ing the forest. Other land uses are more restrictedin their provision of habitat and food sources withthe resultant floristic and faunal diversity reflectingthese differences (Meijaard et al. 2006; Meijaardand Sheil 2008). Because of the relative sensitivityof species to different land uses, their contributionto the conservation of biodiversity varies (Dutton2001; Jepson et al. 2001; Bengen and Dutton 2004;Curran et al. 2004; Meijaard et al. 2006; Nakagawaet al. 2006; Meijaard and Sheil 2007; Wells et al.2007).
This situation presents a variety of challenges.The suite of possible land uses is complex and thecontrol variable is not binary. Furthermore theremay be constraints, upper and lower, on how muchland that can put into different land uses, suchas in protected areas or oil palm plantations. Wecan, however, examine different land allocation
Wilson et al.: Setting Conservation Priorities 251
scenarios by accounting for these constraints, andthe relative costs and benefits of different land uses.First, we need to know the relative sensitivity of ourbiodiversity assets to forest conversion, and thenassign targets that accounts for this. We can thendetermine the contribution of each land-use zoneto achieving the targets for each asset. With suchinformation we can evaluate not only where to actbut how to act in order to effectively and efficientlyconserve biodiversity.
Conservation Action Planning
Conservation Action Planning (CAP) is onepart of the Conservation by Design process de-veloped by The Nature Conservancy (TheNature Conservancy 2000, 2003). It was de-veloped as a stakeholder-driven planning ap-proach for landscape-scale projects, but has alsobeen used at regional and local scales. The ap-proach is designed to be iterative and adap-tive, recognizing that information is always in-complete, but should improve over the life of aproject. The CAP approach is based on “TheFive S’s.”
• Systems: The conservation assets in a land-scape and the key ecological attributes thatmaintain their viability (generally, 6–8 as-sets are employed).
• Stresses: The types of destruction or degra-dation impacting each conservation asset.
• Sources: The agents generating the stresses.• Strategies: The types of conservation actions
that can be deployed to abate sources ofstress.
• Success: Measures of biodiversity health andthreat abatement.
The aim of the CAP approach is to iden-tify actions that maintain healthy, viable oc-currences of the conservation targets. By def-inition, healthy occurrences are not signifi-cantly stressed, and measures of success caninclude indicators of the effectiveness of con-servation strategies and indicators of targetviability.
The CAP process has the benefits of be-ing stakeholder driven and iterative. The ap-proach accounts for the key elements of a con-servation prioritization problem and reflects aproject-management tool that is a mixture ofa focal species approach and a static multiple-action prioritization approach. The process en-courages consideration and articulation of whatconservation success in a landscape would looklike and how progress toward this goal will bemeasured. A key limitation of the approach isthat the consideration of the cost and likeli-hood of success of each action are not an inte-grated and explicit part of the planning process,and therefore have little influence on the initialidentification and prioritization of conservationactions.
Dynamic Multiple-Action Prioritization
In dynamic versions of the multiple-actionconservation prioritization problem our man-agement decision is how much of our budgetto allocate to each conservation action at eachtime step. For each conservation action we needto know what it costs per unit area and itsbenefit to the relevant biodiversity assets(Table 3; Box 4). We also need to know thecurrent investment in the conservation actionand the remaining area that would benefit fromfurther investment in the action. We can thengenerate dynamic investment schedules thatreflect shifts in the allocation of funds as thereturn from investing in each conservation ac-tion diminishes. The investment schedule is de-termined by the interplay of three main fac-tors: (1) the relationship between the additionalarea invested in each conservation action andbenefit to biodiversity, (2) the cost of this in-vestment, and (3) the existing level of invest-ment. We can then seek to prioritize actionswith the greatest benefit per dollar invested(i.e., to maximize gains), or if the rate of habi-tat loss is known, we can prioritize actionsthat will minimize the expected loss of biodi-versity (i.e., to minimize losses) (Sarkar et al.2006; Wilson et al. 2006; Murdoch et al. 2007).
252 Annals of the New York Academy of Sciences
TABLE 3. Examples of Three Conservation Actions Identified to Abate Key Threats to Biodiversity in TwoAustralian Ecoregions∗
Invasive predator Phytophthora cinnamomi
control management Revegetation
Eyre and Mount Eyre and Mount Eyre and MountConservation action York Lofty York Lofty York Loftyand ecoregion mallee woodlands mallee woodlands mallee woodlands
Number of assets protected 514 517 251 255 153 157Cost of the action (US$/km2) 301,154 301,005 514,592 514,443 7,091 6,942Total area of the ecoregion (km2) 60,896 23,786 60,896 23,786 60,896 23,786Area already receiving action (km2) 18,926 4,753 0 0 416 1,221Area requiring action (km2) 6,295 2,855 12,791 4,198 18,510 3,532
∗The number of assets estimated to be protected by the action (i.e., the number of species sensitive to the threatsthat each action will abate) and the cost of investing in each action is provided, along with estimates of the area alreadyreceiving the action and the additional area requiring the action.
Multiple-action conservation prioritization hasbeen shown to outperform more traditionalapproaches to conservation funding allocationthat focus solely on protected-area establish-ment (Box 4). Although fully comprehensivestudies are desired, multiple-action prioritiza-tion analyses suffer from the same limitationsas other prioritization analyses discussed in thisreview. In particular, data and computationalconstraints often deem it prohibitive to fullyaccount for complexities such as the temporaland spatial heterogeneity associated with in-formation on costs, threats, and benefits, not tomention the stochastic nature of environmentaland socioeconomic factors (Wilson et al. 2006,2007).
Multiple-action prioritization problems canbe potentially very complex. For example, therecan be spatial dependencies and the impact(and cost) of actions will likely vary betweenassets. The change in value from investmentin different actions depends on the relation-ship used to describe the objective function;common forms include threshold, linear, sig-moid, or concave (Fig. 1). Van Teeffelen andMoilanen (2008) evaluate the consequences ofusing different functional forms for the objec-tive function. A linear relationship provides a
Figure 1. Four possible objective-function shapes:linear, threshold, sigmoid, and concave.
continuous accumulation of benefit, whereas athreshold function reflects an assumption thatthe benefit peaks once the threshold is reached.A concave objective function reflects a situa-tion of diminishing marginal gains. The sig-moid objective function reflects an assumptionthat low levels of investment will deliver low re-turns and that the returns increase rapidly aftersome amount of investment is reached and thentapers off.
Wilson et al.: Setting Conservation Priorities 253
Box 4. Maximizing theConservation of Biodiversity
Through Investment in a Rangeof Conservation Actions
Through Time: A Case Studyfrom Mediterranean
Ecoregions
Wilson et al. (2007) developed a framework forguiding the allocation of funds among alternativeconservation actions that address specific threatsand applied it to 17 of the world’s 39 Mediter-ranean climate ecoregions. This subset of Mediter-ranean ecoregions covers parts of Australia (tenecoregions), Chile (one ecoregion), South Africa(three ecoregions), and California and Baja Cali-fornia (three ecoregions). In total, they evaluated51 ecoregion–conservation action combinationswhich were termed “ecoactions.” In Australia, forexample, ten Australian Mediterranean ecoregionswere analyzed and three primary threats wereidentified: habitat fragmentation and salinization(with salinization the result of altered hydrologicalregimes); introduced predators (focusing on cats[Felis catus] and foxes [Vulpes vulpes]); and the soil-borne pseudofungus Phytophthora cinnamomi. Themitigating actions selected were (for each respec-tive threat) strategic revegetation, invasive predatorcontrol and research, and a mix of precautionaryand preventive measures, including the applicationof phosphite, quarantine, education, research, andcommunication. For each of these threats severalpieces of information were obtained (Table 3).
Wilson et al. (2007) assumed that the marginalbenefit decreases for each new unit area receiv-ing investment, and therefore, the benefit dimin-ishes with cumulative investment. This relationshipwas modeled using species-area curves, which wereconverted into species-investment curves. Only 24ecoactions (of the 51 possible) received investmentduring the first five years. A mix of land protec-tion and off-reserve management in South Africawas highly rated, along with invasive-plant con-trol in Chile, California, and South Africa. Theseconservation actions yielded the greatest marginalreturn on investment over five years because thebiodiversity benefits were high and the costs werecomparatively low. However, this does not involvesimply prioritizing the cheapest actions, or themost species-rich ecoregions; rather, this informa-tion is integrated to find the most cost-effectivecombinations.
The ecoaction-specific framework was thencompared to a model of conservation that focusesonly on land acquisition. Over five years almostfour times as many species can be protected us-ing the ecoaction approach (2780 vs. 703 species).These results suggest that investing in a sequenceof conservation actions targeted toward specificthreats, such as invasive-species control and firemanagement, will deliver greater biodiversity re-turns than by relying solely on acquiring land forprotected areas.
We can also incorporate complementaritywithin this dynamic multiple-action prioritiza-tion framework. Complementarity is importantif we aim to minimize the cost of the conser-vation action under consideration, ensure thatall biodiversity assets (e.g., species, vegetationtypes) receive some level of conservation invest-ment, and identify location-and-action combi-nations that complement those that have al-ready received investment (Justus and Sarkar2002). To apply complementarity we requireinformation on the specific biodiversity con-tent of locations, as opposed to summary statis-tics such as species richness. Furthermore, loca-tions and actions must be evaluated collectivelyrather than independently.
Our objective when accounting for the prin-ciple of complementarity is to protect as manydifferent, or “distinct,” biodiversity assets aspossible. As described earlier, the shape of ourobjective function reflects the functional rela-tionship between assets protected and the levelof investment. In the case of two actions A andB, we would consider not only an “A curve’ anda “B curve’ for assets only benefited by actionsA and B, respectively, but also an “AB curve’ forassets benefited by both actions A and B (Fig. 2).For three or more actions, we would considera total of seven curves: A, B, C , AB, AC , BC ,and ABC . The number of curves thus increasescombinatorially as the number of actions in-creases. Using complementarity favors actionswhere for each dollar invested, the sum of theadditional assets benefitted is greatest. Someactions might require other actions in order to
254 Annals of the New York Academy of Sciences
Figure 2. A hypothetical example of the curvesrequired to account for complementarity between twoactions (A and B). Curve A and curve B representthe number of distinct assets benefited by investing inaction A and B, and curve AB represents overlappingassets benefited by investing in both actions A and B(Underwood et al. 2008).
be successful, and there can be negative inter-actions between actions if the action requiredfor one species is detrimental to the conserva-tion goals of another. Not accounting for theseforms of complementarity will overestimate theconservation benefit of a set of actions.
Exploring Trade-Offs and Dealingwith Multiple Objectives
A trade-off exists in conservation priority set-ting under two conditions: when two or moreassets are not perfectly aligned, and/or whenthe budget or some other constraint preventsus from reaching our targets for all biodiversityassets. For example, we may be unable to im-mediately conserve adequate representations ofeach threatened species whose distributions donot overlap. Under such circumstances we havea trade-off between those targets that we meetnow and those we may attempt to meet later.Trade-offs are unavoidable in priority settingwhen there are multiple considerations, whichis almost always the case. Even in a simplis-tic prioritization problem involving only the
identification of potential protected areas, pro-tection of multiple assets will likely be soughtand the implementation of protected areas willlikely be incremental. We therefore need tomake decisions about which areas should beprotected first. Trade-offs can become evenmore complex when benefits other than bio-diversity conservation are sought, such as thedelivery of ecosystem services or the protectionof sites of cultural significance.
In the case of ecosystem service conservation,we can assess the spatial and temporal con-gruence of ecosystem services and biodiversityassets. If such an analysis shows that areas ofhigh biodiversity and ecosystem service valuecoincide, then conservation intervention willsimultaneously benefit both (a “win-win” sit-uation). Concordance between ecosystem ser-vice delivery and biodiversity conservation hasbeen found at a variety of scales, suggesting thatsuch opportunities exist (Turner et al. 2007).However, other analyses have found limitedspatial congruence between important areasfor ecosystem services delivery and biodiversityconservation (Chan et al. 2006; Naidoo et al.2006). There are several reasons for such out-comes. It is likely that the provision of ecosys-tem services is best achieved by land-use optionsthat are suboptimal for biodiversity conserva-tion (for example, the growth and harvest ofcereal crops may be more efficient in relativelyspecies-poor ecosystems) (Cassman and Wood2005). Many forms of biodiversity do not offerknown benefit to humans, and some biodiver-sity is even detrimental to humans. In areasthat are heavily cleared, habitat loss and frag-mentation would reduce the ecosystem servicevalue of the land, while increasing the biodi-versity value of the remaining habitat (Turneret al. 2007). Finally, while patterns of richnessin different assets may coincide, patterns ofcomplementarity may not. We therefore needto explicitly account for the possibility thatsynergies between conservation and ecosystemservices will not exist. The mathematical inte-gration of multiple objectives depends on cor-rect problem formulation, and again there is a
Wilson et al.: Setting Conservation Priorities 255
distinction between maximal-coverage prob-lems and minimum-set problems (Box 1).
In maximal-coverage problems actions areselected that maximize some benefit withoutexceeding a conservation budget. When thereare multiple objectives, we can modify the rel-ative weighting of each objective: for example,the conservation of biodiversity and the provi-sion of ecosystem services. In effect, the overallobjective becomes the selection of actions thatoptimize the weighted sum off these subobjec-tives. Weighting objectives can involve somelevel of arbitrariness, as previously discussed,but also provides flexibility to explore trade-offs by investigating a range of weights (Arthuret al. 2004).
A trade-off curve can be helpful in prioritysetting for multiple objectives, by highlightingsets of options that achieve different amountsof each objective. When we vary the relativeimportance of protecting biodiversity versusprotecting ecosystem services through its fullspectrum, we define a “Pareto-frontier”: thebest landscape outcomes achievable for anytwo-criteria optimization (Nalle et al. 2004).An example of this frontier is shown inFigure 3. The highest and lowest points in thisfigure correspond to landscapes planned exclu-sively for ecosystem services and biodiversity,respectively, with the points in between rep-resenting compromises across both objectives.When aiming to achieve two disparate objec-tives, any set of actions that exists inside thePareto-optimal line is suboptimal.
In minimum-set problems actions are se-lected that meet conservation targets at a min-imal overall cost. We can include targets fora virtually unlimited number of assets. In thistype of problem formulation the achievementof targets for each asset is a kind of subobjec-tive, where the overall objective is to meet alltargets. For example, Chan et al. (2006) prior-itized places that protect variable targets for aset of assets, and that store at least 50% of thecarbon within the entire region. This target-based approach has the benefit of avoiding theneed for arbitrary weights (although targets can
Figure 3. Pareto-frontier for biodiversity andecosystem service protection for a hypotheticallandscape.
involve arbitrary elements) and of identifyingsets of priorities that can be evaluated againstquantitative targets. The target-based ap-proach itself does not explicitly address trade-offs, but trade-offs can be investigated by vary-ing the targets and evaluating the difference inthe overall cost (Egoh et al. 2007).
How Can We Better SetConservation Priorities?
Account for theSociopolitical–Economic–Ecological
Context
The probability of success of different con-servation actions is influenced by numeroussociopolitical factors, including political stabil-ity and corruption, budget continuity, gover-nance, and stakeholder willingness to be in-volved in conservation initiatives (Barrett et al.2001; Smith et al. 2003; Knight and Cowl-ing 2007). Although uncommon, we can ac-count for the probability that a conservationaction will succeed by modifying the expectedbiodiversity benefit (Hobbs and Kristjanson2003; McBride et al. 2007; Joseph et al. InPress-b).
256 Annals of the New York Academy of Sciences
In global and even regional problems, therecan be much variation in the political and eco-nomic systems and in societal needs, whichaffect the suitability of different conservationactions. Inadequate handling of such issueshas led to conservation failures. For example,the implementation of the Natura 2000 net-work in Finland was problematic due to in-adequate consideration of the needs and de-sires of landholders in the prioritization process,and the availability of sufficient funds to com-pensate landholders for the loss of land rights(Hiedanpaa 2002). Such an example points tothe importance of ensuring that the conserva-tion instruments employed are suited to the lo-cal context.
Market-based instruments take advantage ofmarket forces and social responses and areoften an efficient conservation prioritizationtool. Reverse auctions is a market-based in-strument that involves the efficient selectionof “bids” placed by landowners for the finan-cial compensation they will accept to managetheir land for conservation outcomes (Table 2).Reverse auctions have been carried out suc-cessfully in the United States (Reichelderferand Boggess 1988) and in parts of Australia(Grieve and Uebel 2003; Stoneham et al. 2003;Hajkowicz et al. 2007). Reverse auctions dif-fer from more traditional priority-setting ap-proaches because they only consider parcels ofland that are available for conservation inter-vention (only amenable landholders will placebids), and they elicit real costs, thus overcomingthe difficulty of predicting the costs of conser-vation. Reverse auctions are, however, unableto assess the potential contribution of all parcelsof land to an overall conservation goal and arenot suitable for strategic planning over largeregions.
It is also important to consider the ecologi-cal context and the extent that an asset is likelyto be benefited by a particular action. In somecases, an action implemented alone is unlikelyto achieve the conservation goal and the in-terdependencies between actions must be con-sidered. A simple example is the purchase and
management of land for the establishment ofprotected areas. If the key threat facing an areais native habitat loss due to conversion to an-other land use, then purchase of the land mightabate this immediate threat. However, if thebiodiversity values of the land are also threat-ened by weed invasion and habitat degrada-tion, then land purchase without accountingfor the costs of restoration and management toensure the persistence and health of the biodi-versity it contains will be insufficient. In suchcases the costs of all required conservation ac-tions (acquisition and management) and theirrelative benefits should be considered from theoutset.
Explicitly Account for Uncertaintyand Risk
There are many forms of uncertainty as-sociated with biodiversity conservation. Theseinclude the likelihood of success of conserva-tion actions, uncertainty about our objectives(have we been asking the right question?), anduncertainty associated with the data used toparameterize our analyses. Uncertainty (ran-domness with unknowable probabilities) differsfrom risk (randomness with knowable probabil-ities) (Knight 1921).
First, we can assess whether the uncertaintyin a particular parameter will be naturally re-duced or resolved during the process of im-plementing the conservation action. For exam-ple, there is often uncertainty associated withboth the cost of purchasing a parcel of landand whether the assets we wish to conserve arepresent at the site. However, before establish-ing a protected area, we will be exposed to up-dated information about the land. For example,we will know the price at which a landowneris willing to sell and we are likely to under-take a biological survey to ensure that the landcontains the assets we wish to conserve. Forthese kinds of uncertain parameters an adap-tive approach is essential, where priorities areupdated as new information becomes available(see below).
Wilson et al.: Setting Conservation Priorities 257
If the uncertainty will not be naturally re-solved, we might aim to reduce the uncer-tainty by collecting more information, for ex-ample, through improving our knowledge ofthe system and its dynamics (Haight et al. 2005;Armsworth et al. 2006). However, obtainingmore information can come at a cost, both fi-nancially and through opportunities that mightbe lost as we acquire further information. Forexample, it has been argued that new biodi-versity surveys lead to more efficient conserva-tion plans and therefore the surveys representgood investments (Balmford and Gaston 1999).Grantham (2008) found diminishing returns onsurveys of Protea species in South Africa, how-ever, and identified thresholds beyond whichfurther investments in surveys would not de-liver more effective protection of Protea species(despite a much better understanding of thedistribution of the species). This study indicatesthe importance of accounting for the returnon investments in different data, the benefitsthe additional data deliver to our conservationoutcomes, and the opportunity costs associatedwith the investments.
We can also explore the range of possiblevalues for an uncertain parameter, noting howdecisions may change depending upon the pa-rameter value. Such sensitivity analyses can beuseful to identify the parameters that have thegreatest impact on the outcomes, and deter-mine which parameters to collect more infor-mation for, and thus reduce uncertainty. How-ever, in many situations, risks and uncertaintycannot be removed.
We might aim to set conservation prioritiesthat are robust to risk and uncertainty (Ben-Haim 2001; Nicholson and Possingham 2007).Here we need to know (or estimate) the like-lihood that an unplanned but conservation-relevant event may occur, such as the risk ofa hurricane, fire, or coral bleaching event, orthe risk that a conservation action will not becarried out correctly (the inverse of its likeli-hood of success). We can then either priori-tize actions (or locations to carry out an action)that meet conservation targets while minimiz-
ing some combination of risk and cost (yet an-other trade-off ) (Game et al. 2008), or prioritizeactions that maximize the expected or likelyconservation benefits for a fixed budget (Josephet al. In Press-b). Note that these solutions rep-resent modifications of Equations (1) and (2),respectively.
Allow for Opportunities and Feedbacks
Like all actions, conservation actions createreactions and these reactions can be in the formof potentially beneficial opportunities or nega-tive feedbacks. In some cases, opportunities andfeedbacks can be predicted, particularly wherethere is a sound knowledge of the system or wehave been able to learn from past experiences.Where possible, predictions of both positive andnegative effects of conservation actions shouldbe explicitly incorporated into the priority set-ting processes.
Establishing a protected area in a region canhave positive effects. For example, the liveli-hood of residents might be improved throughthe provision of opportunities for ecotourismventures, which can potentially reduce the de-pendence of local communities on natural re-sources. Successful conservation outcomes in aregion can also be the key that unlocks furtherfunds for conservation. In order to account forsuch leverage, we can modify Equation (1) toinclude an increased budget to represent addi-tional funds, and we can modify Equation (2) toinclude the additional benefits that have beengained.
Negative feedbacks can also occur. For ex-ample, the purchase of properties for a newprotected area may drive land prices up due toincreased demand for land for other purposes.This can have perverse effects on local commu-nities, and also make it more expensive to es-tablish additional protected areas (Costello andPolasky 2004). The protection of a particularparcel of land because it is biologically valuableand also threatened by conversion, may simplydisplace the threat to nearby areas. There ex-ist approaches to predicting and incorporating
258 Annals of the New York Academy of Sciences
negative feedbacks in dynamic conservationplanning situations (Armsworth et al. 2006).Whenever a parcel of land is purchased, therelative price of other parcels of land is alteredusing knowledge of the dynamics of the localmarket. Likewise, the likelihood of success canbe updated in a similar manner.
It is important to acknowledge that theeconomic and sociopolitical reaction of sys-tems and people to conservation cannot al-ways be predicted. Unforeseen reactions canoccur, leading to perverse conservation and orsocial outcomes. Hence, rather than being top-down and inflexible, conservation priority set-ting should be modest and flexible to allow foradaptation to or mitigation of perverse out-comes. The financial and ecological impact ofunforeseen opportunities or reactions shouldbe explicitly accounted for as they arise andassessed within the prioritization framework.We can then learn from such evaluations tobetter respond to opportunities and negativefeedbacks in the future.
Evaluate, Learn, and Improve
There has been growing concern among theconservation community surrounding the lim-ited availability of evidence that investmentshave achieved sound conservation outcomes(Ferraro and Pattanayak 2006). This situationreflects a general tendency for only successfulconservation stories to be reported (Redfordand Taber 2000; Knight 2006) and the limitedresources allocated to monitoring and evalua-tion (Field et al. 2007). This is problematic, sincea lack of evaluation and honest reporting meansthat the process of learning and improvementis hindered and past mistakes may be repeated.There is a clear need for better evaluation pro-cedures, a systematic process for learning frompast successes and failures, improved commu-nication to extend this knowledge, and adaptivepriority setting.
Adaptive priority setting is a relatively sim-ple process, requiring the fluid updating ofpriorities and priority-setting approaches in
response to new information as it becomesavailable (Higgins and Duane 2008). Againflexibility is essential, both in the mentalityof decision-makers and the tools deployed.Broadly speaking, there are three approaches toadaptive management: passive adaptive man-agement, where we simply learn by analyzingthe outcomes of past interventions (this is themost common approach); experimental adap-tive management, where we actively manipu-late the system to maximize how fast we learn;and active adaptive management, where we op-timally manage taking into account the possi-bility for learning. The latter is optimal, buttechnically complex (Walters 1986; McCarthyand Possingham 2007; Hauser and Possing-ham 2008). A properly formulated active adap-tive management problem leads to solutionsto conservation problems that properly inte-grate managing, monitoring, and learning, andhence leads to a reduction of uncertainty.
Conclusions
A broad range of priority-setting approachesis available, matching the myriad types ofconservation decisions faced by conservationscientists and practitioners. By distilling conser-vation prioritization problems into the compo-nents of age-old decision theory, all problemsbecome comprehensible and solvable. Whileacknowledging the variety and complexity ofconservation problems, we have presented aframework and summarized general rules thatcan help to guide most conservation prioritiza-tion tasks. First, problem formulation is critical.Without a clear definition of goals, as well asthe identification of actions and their costs andlikely benefits, decisions are unlikely to be cost-effective, and outcomes cannot be evaluated.Second, considering the conservation actionsto be undertaken in a particular location to pro-tect key assets is the most comprehensive formof conservation prioritization. Third, conser-vation decisionmakers need not shy away fromproblems with multiple objectives, or those that
Wilson et al.: Setting Conservation Priorities 259
are prone to uncertainty and risk—rather, thisinformation can be explicitly included in thepriority-setting process to improve conserva-tion decision-making. And finally, an adaptableand flexible approach to priority setting is es-sential to ensure we can effectively respond toopportunities, feedbacks, and improved knowl-edge. The principles and examples we presentshould only be applied with flexibility, humility,and a sound knowledge of the socioecologicalsystem.
Acknowledgments
The authors acknowledge funding from theAustralian Research Council, Conservation In-ternational, The Nature Conservancy, the Ap-plied Environmental Decision Analysis Com-monwealth Environmental Research Facility,the Australian Department of Environment,Water, Heritage and the Arts, and the Com-monwealth Scientific and Industrial ResearchOrganization (CSIRO). We are also grateful formany stimulating conversations and discussionswith collaborators and colleagues from aroundthe world that have provided a diverse array oftheories, planning approaches, data, and appli-cations on which we could base this review.
Conflicts of Interest
The authors declare no conflicts of interest.
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