1 economics of innovation patent races: dasgupta- stiglitz model manuel trajtenberg 2005

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1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Page 1: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

1

Economics of Innovation

Patent Races:Dasgupta- Stiglitz Model

Manuel Trajtenberg2005

Page 2: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Patent Races

Dasgupta, P. and J. Stiglitz, "Uncertainty, Industrial Structure, and the Speed of R&D." The Bell Journal of Economics, 1980 (11), pp. 1‑28.

1. No uncertainty, R&D determines time of discovery; baseline, useful for further analysis.

2. Uncertainty as to time of discovery, Poisson process

Page 3: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Dasgupta – Stiglitz (DS) 1

0)('' ,0)('

0)( ,)0(

:)(

xTxT

TT

xT

cmsjer

V trjtj ,, ),1( If finite patent:

R&D: x, determines the timing of invention, T(x):

Page 4: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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R&D: x

Discovery Time T(x)

R&D and time to discovery

Page 5: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS 2

1)(' :

, ),(

)(

)(

xrTj

xrTj

x

eVxrTFOC

msjxeVMax

Therefore,

)()( ****msms xTxTxx

Page 6: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

6

45

*mx *

sx x

)( xrTjeV

m

s

Optimal R&D: “s” versus “m”

sV

mV

Page 7: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

7

DS 3

If competition, game not well defined. Clearly, in eq. just one firm (recall no uncertainty); free entry => zero profits:

*)(* *

: cxrT

cc xeVx c

*

*

0

cI

cIIf

xxif

xxifxx

Stackelberg eq. (I: incumbent, f: follower):

Page 8: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

8

45

*mx *

cx*sx x

)( xrTjeV

m

c

s

Optimal R&D for each case

Page 9: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS 4

**

****

?

,

sc

mcms

xx

xxxx

DS show that for constant-elasticity demand functions,

The more so the more elastic the demand.

From social point of view, dx just moves forward invention date by a bit; for individual firm, it may bring the full reward.

**sc xx

Page 10: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS 5 • Without uncertainty, in competition just one firm does R&D, but makes zero profits (it may license to others, or do limit pricing) => anti-trust implications…

• It may overinvest in R&D…(but still, recall spillovers); partial appropriability (smaller V) versus pressure of competition.

• In a real patent race: many do R&D, one gets the full “prize”. Basic notion: to actually compete you must stand a chance ex ante…or be able to split the rewards (often happens)

Page 11: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Introducing uncertainty: a reminder

)()(

!)(

YVarYE

y

eyYPr

y

The Poisson distribution for a discrete random variable Y (such as the number of innovations or patents) is:

Page 12: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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The Poisson Process

Consider the random variable Y, the number of occurrences over a fixed time interval, and assume that,

(i) The probability of an occurrence during a short time interval t+t is: t.

(ii) The probability of more than one occurrence during such time interval is negligible.

(iii) The probability of an occurrence during such time interval does not depend on what happened prior to time t.

Page 13: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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The Poisson Process – cont .

If those conditions hold, then the number of occurrences over a time interval of length t has a Poisson distribution with mean: t

Thus is the expected number of occurrences per unit time

Examples:

• Number of telephone calls received at a switchboard during a given time interval.

• Number of atomic particles emitted from a radioactive source that strike a target during a given time interval.

Page 14: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS w/uncertainty 1

If the occurrence of innovations over time follows a Poisson process, then the probability distribution of the waiting time until innovation, T, is:

tt

ete

g tions durin0 innovatPtTP

1!0

)(1

)(1)(0

!)(

y

eyYPr

y

Page 15: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS w/uncertainty 2

Now assume that the parameter is determined by the amount of R&D that firm i invests, xi , i.e .

)( ii x Then the probability that firm i will innovate until time t is given by

txi

tx

i

i

extf

etFtTP)(

)(

)()(

1)()(

Page 16: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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)(x

x

The “R&D lab technology”

Page 17: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS w/uncertainty 3

The expected innovation time for firm i is then,

)(

1)|(

ii x

xTE

)(

1

)(1)()(

0

)(

0 0

i

tx

xdte

dttFtdttfTE

i

Page 18: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS w/uncertainty 4

Assume that the R&D programs of different firms are (statistically) independent. Then,

ni in x1 )(

Assuming symmetry,

)(xnn

Page 19: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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DS w/uncertainty 5

Then the probability that some firm will invent until t is,

tn

nexxtTP 1),...,|( 1

and,

)(

11),...,|( 1 xn

xxTEn

n

Page 20: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Maximizing social surplus

),;()(

o

rts nxdtexntfVSE

nxrxn

xnVSE

exnxntf

s

txn

)(

)( )(

)(),;( )(

Notice twice discounting…Assuming symmetry :

Page 21: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Maximizing social surplus 2

1])([

)(' 0 )2(

])([

)( 0 )1(

:

)(

)( )(

2

2

rxn

rxV

x

E(S)

xrxn

rxV

n

E(S)

FOC

nxrxn

xnVSEMax

s

s

sn,x

Page 22: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Maximizing social surplus 3

*)('*

*)(

)('

)(x

x

xx

x

x

Divide (1) by (2),

That is, the marginal equals the average, hence exhaust “scale economies” in R&D, then replicate R&D labs.

Page 23: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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)(x

xx*

Optimal amount of R&D in each lab

If concave replicate many tiny labs (stat independence…), if convex just a huge one…

Page 24: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Comparing social optimum to monopoly

A monopoly firm maximizes same objective function, except that Vm<Vs, and therefore,

**** , smsm nnxx

That is, the monopoly will set up a smaller number of labs, in each same amount of R&D (x*: just a technical issue); total R&D for monopoly less than

socially optimal .

Page 25: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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1st FOC for “s”

snmn

x*

1st FOC for “m”

Optimal n : s versus m

xrxn

rxV

n

E(j)j

2])([

)( 0 )1(

Page 26: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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The competitive case: free entry

txii

iexxtf )()()|(

ij j txij extF

)()|(1

ij j txij extF

)(1)|(

The unconditional probability of firm i inventing at t:

The probability that some other firm invents up until t:

Hence the probability that nobody else invents up until t:

Page 27: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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competitive case – cont. 1

n

j j txi

iji

ex

xtFxtf

1)(

)(

)|(1)|(

The probability that firm i invents up until t, conditional on nobody else having invented till then:

Page 28: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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competitive case – cont. 2

0

)(1)()( i

rttxicci

xxdteexVPVEMax

n

j j

i

xrxn

xVPVEMax cc

x

)(

)( )(

The objective function of a competitive firm,

Assuming symmetry,

Page 29: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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competitive case – cont. 3

)(')(

)(

)( :

1)(

)(' :

xx

x

xrxn

xVentryfree

rxn

xVFOC

c

c

xrxn

xVPVEMax cc

x

)(

)( )(

Assuming that each firm is small enough so that there are no strategic interactions, i.e. each takes (xj)=n(x) as

given (like taking as given the expected date of discovery), the free entry equilibrium is:

Page 30: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Compare social optimum to free entry equilibrium

xrxn

xVPVEMax

ximandPrivate ma

nxrxn

xnVPVEMax

MaximandSocial

ccx

ssnx

)(

)( )(

:

)(

)( )(

:

,

Social: maximand multiplied by n, and cs VV

Page 31: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Social optimum vs. free entry

xrxn

xVxE

Private op

xrxn

rxV

n

E

op.Social

c

s

)(

)( )(

: .

)(

)(0

)(

:

2

Page 32: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Social optimum vs. free entry 2

• If Vc = Vs then nc > ns;

• If Vc < Vs then can go either way.

• If Vc < Vs and too little R&D (i.e. too few firms),

could in principle increase patent life so as to increase Vc and bring nc = ns ; but it could be

that even an infinite patent will not do.

• What if Vc < Vs and too much R&D? In any case, optimal x

Page 33: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Social optimum vs. free entry 3

(i.e. how “drastic” is the innovation)

Demand elasticity Too little

R&D

Too much R&D

oldnew cc /

Page 34: 1 Economics of Innovation Patent Races: Dasgupta- Stiglitz Model Manuel Trajtenberg 2005

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Qualifications

• Limitation of Poisson: cannot change riskiness (the variance) without changing the mean.

• The “V” does not include spillovers

• The labs not statistically independent

• The “lab technology” may vary across firms

• Other ?