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Campaign Optimization Using Business Intelligence and Data Mining March 2007

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8/14/2019 Datamine Campaign Optimization Short 001 09

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Campaign OptimizationUsing Business Intelligence and Data Mining

March 2007

8/14/2019 Datamine Campaign Optimization Short 001 09

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Outline

Key concepts & definitions

 A common language regarding campaigns, the main dimensions & metrics involved

The need for campaign optimizationThe typical campaign management lifecycle and the need for optimization

Designing the Target GroupData-driven approaches for target group definition – use of BI and Data mining techniques

Performance Analysis Analyze campaign response data, model customer responses, compile reports

 Application within E-Business environmentsCampaign, recommendation, profiling and personalization

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Key concepts & definitions

Campaign

 A set of systematic promotional activities (multiple offers, scenarios & channels) against a welldefined target group (advanced business logic for accurate customer selection) within a controlled

environment (infrastructure for response gathering, reporting, analysis and modeling).

Campaign Management

Infrastructure & processes enabling efficient design (Target group definition - customer selection,

eligibility criteria, profile analysis), smooth execution (integration with communication channels) and

effective response analysis (response gathering, analysis, reporting and modelling).

Data Mining & BI (Business Intelligence)

BI is based on several technologies & scientific areas such as information technology, multidimensional

data exploration technologies (OLAP), data mining, statistical modeling, text mining, visualization

techniques

BI enables companies to explore, analyze, and model large amounts of complex data

BI can greatly enhance Campaign Management processes from Design (TG definition), Execution

(efficient communication planning), to response analysis & modelling (exploratory and/ or with data

mining)

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The need for optimization

The ultimate goal

Enable the right treatment on the right customer at the right time through the right channel . Thisfurther enables customer understanding (needs, preferences, usage & buying patterns) enabling

customer response analysis and modeling

The roadmapDesign, implement and automate solid campaign management processes. This will provide flexibility (in

handling customers, products and promotions), reliability (regarding execution, response gathering) and

robust measurement & analysis processes - functions. This will enable a systematic monitoring and

analysis framework to support decisioning in general

The business value Winning the performance game (On-time Schedule Indicator, Cost Per Activity)

Customer insight - usage patterns, profiles and customer base trends may reveal significant

cross-selling or up-selling opportunities

Assessment of marketing actions, special offers or campaigns can be assessed in detail using

customer responses and changes in usage patterns: The Closed Loop Marketing

Retain (ensure) or increase Customer Satisfaction levels

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Campaign ManagementSystem

Customerdatabase

Documents& templates

Communication Channels

Justselectand type

text.Use control

handle to adjustline

spacing.

Call Center 

Email Server 

Marketing UserCustomers

Campaigning: lifecycle

Target Group DefinitionThe MKT user interacts

with CMS in order toexplore the customer

base and design the

most effective target

group

1

Customer Profile AnalysisCMS retrieves customer

information in order toprovide sufficient

segmentation capabilities to

the MKT user

2

Target Group Release forcontact

List of customers –TargetGroup- as defined from the

MKT user, and after applying

the selected, predefined

exclusion logic

3

Customer CommunicationThe offer assigned to the

campaign is beingcommunicated to the

customer according to the

predefined script or template

4

Customer ResponseCustomer responses are being

forwarded into the system for

campaign assessment,

monitoring and optimization

5

Campaign AnalyticsCampaign performance

statistics, customer

demographics, campaign

lifecycle information, call center

performance reports and

analytics

6

Campaign performanceAssessmentSufficient input for better

campaign design, customer

behavior modeling. Insight for

process monitoring, KPIs for

assessment studies

7

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Target Group DesignLocate, profile and manage customers according to

composite business logic

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Designing the target group

Using Segmentation schemes

effective schemes for categorizing and organizing meaningful groups of customers

Customer Profilingthe process of analyzing the elements (customers) of each segment in order to generalize, describe or 

name this set of customers based on common characteristics. It is the process of understanding and

labeling a set of customers

The process

the target group definition process is an iterative procedure aiming in compilation of a well

structured set of customers with certain degree of homogeneity regarding a set of attributes.

Involves business knowledge, ideas & creative thinking as well as data-driven concepts, facts

and modelling activities

Requires effective exploratory analysis and in-depth understanding of the customer base

Can be optimized using advanced modelling techniques and data mining algorithms

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Designing the target group

The Physical Customer Structure

Physical Customer Identification is a critical point in customer segmentation & insight: A physicalcustomer may have several accounts with contradictive behavior regarding usage or payment. The

physical customer (a) must be correctly identified and (b) must be efficiently scored in the top level 

Physical Customer

Usage History Usage metadata

Customer Care

& Contact History

Application, ordering &

payment HistoryTime Related Patterns

Statistical &Data Mining Modeling

Analytics,segmentation & profiling

Benefits

 A complete picture of the customer, in all dimensions ( profitability , risk , loyalty , satisfaction etc)

Elimination of contradictive communication attempts (bonus due to product A ‘performance’ 

while in collections procedure due to product B payment habits)

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Performance AnalysisBrowse, report and model customer responses

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Campaign response analysis

 A Measurement Environment

 A set of metrics, KPIs and predefined reports, enabling an instant picture of each specific campaign.Reports also include suitable comparisons with ‘global constants’ such as group averages, baselines and

predefined limits thus enabling comparative performance analysis of a campaign.

Customer Contact HistoryCustomer campaign memberships and response history (memberships, contacts, feedback, offers &

promotions attempted) should be maintained and further processed in order to generate related customer 

metadata. This ‘customer communication history’ should also be available to other systems as well, thusextending the knowledge regarding customers, their needs and preferences.

Detailed Campaign HistoryCampaign History & Reporting provide rich history of the full lifecycle of each specific campaign.

Information on campaign execution events can be used as markers against the evolution of the customer 

base (reporting before and prior the campaign) for trends, indirect results or pattern identification.

Formal evaluationROI models, comparisons of expected results against actual, analysis versus initial statistical profiles of 

the target group, all packed in standardized, well define reports

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Campaign response analysis

Campaign Analysis Cube

 Analyze campaign response data in any meaningful way. Start with exploratory analysis, browsing theresults in order to see the shape of the response set. A powerful, high-performance environment for 

browsing customer response data. Basic dimensions:

1. Customer segment: enables the projection of the target group of your campaign (and any subset

as well) against the available segmentation schemes

2. Customer Profile type: similarly the customer set can be analyzed in terms of well-known &

understood customer profiles

3. Channel: the channels available/ selected for the specific campaign. Enables analysis of 

performance (for instance response rate against channel used and in combination with other 

dimensions)

4. Offer : the actual promotion, offering to the customer 

5. Contact Time: the time zone (day and time – according to schemes in use)

6. Timing: the time positioning of the communication event in terms of customer critical dates (e.g.

forthcoming contract expiration or renewal process)

7. Script: the actual communication ‘dialogue’ – how the offering has been proposed to the customer 

8. Agent profile: Characteristics of the agent involved (demographics, experience, seniority,

specialization)

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Campaign response analysis

Customer base mapping according to generated profiles

100

75

50

25

0

   R  e  v  e  n  u  e   R  a  n   k

Tenure Rank

0 25 50 75 100

Customer Profiles projected against by revenue & tenure

Response A

Response B

Response C

Response D

Response E

Response categoriesCategorized customerresponses

Customer projection

Projected on a twodimensional space(revenue-tenure)ranks, and colored byresponse category forthe selected profile

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 Applying Data Mining

Data Miningrefers to statistical and machine learning algorithms, applied in large amounts of data, aiming in

identifying hidden relations and patterns. Popular data mining models include decision trees,

clustering & association rules.

Association rules can identify correlations between pages/content not directly or obviously

connected. May lead to previously unknown – not obvious- associations between sets of users with

specific interests thus enabling more efficient treatment of customer 

Clustering is a set of statistical algorithms aiming in grouping together items (customers) that present

at least a certain degree of homogeneity relevant to specific measures. In contrast, the ‘distance’

between groups is maximized, thus forming a physical ‘segmentation scheme’ for further processing or 

event direct use.

Classification refers to a family of algorithms that ‘learn’ to assign items to pre-defined (existing)

groups.

Sequential Analysis is a methodology for unveiling patterns of co-occurrence

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Web AnalyticsCampaigns, recommendation and personalization for 

the e-business

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Personalization: Definitions, Needs & Business Value

Personalization

consists of mechanisms used to adapt a web-site in terms of information / content served or services/ functionality enabled, based on user navigational patterns, their profiles and their 

preferences.

improves customer experience, resulting in more efficient actions through an ‘intelligent web site’

able to adapt according to user’s profile. May dramatically improve customer (user) satisfaction &

Loyalty, usage boost, cross-selling & up-selling opportunities

Personalization within typical e-commerce environments can take the following forms:

Recommendation. Determine suitable material (content, links, listings etc) for the specific user 

and the specific session. The ‘suitability’ of the material is computed from data mining algorithms

which process large volumes of data and identify ‘hidden’ relationships.

Localization. User’s physical geography (as registered), or retrieved (connection based) can be

used and ‘appropriate’ content is displayed

Targeted Advertising. ads that are expected to interest the user most (based on data mining –

profiling & segmentation models)

Email Campaigns. Personalized messages to highly targeted users (according to their 

profiles/interests & segmentation schemes)

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Personalization: An overview

Portal UserBusiness Users

   W  e   b  s   i   t  e

I.T.Infrastructure

CMS DOC

Billing

User InteractionSession data that describetypical user interaction with theportal/ web site. Includesrequests, user registration andpreference data, navigationalinformation

1

2 3

User Request/ datasubmissionregistration andpreference data,

navigational information

Web Analytics Infrastructure Data miningmodels

ETL

Data gathering,Cleansing, preparation &

standardization,data mining specific

transformations

Analytics Database

Customer profiles,content structure &

Metadata, processed trafficinformation

RecommendationsEngine

Reporting Engine

PersonalizedOutputPersonalized content(links, documents),controlled functionality

4

5

Systematic Raw Data FeedRaw data describing key portal entities, trafficdata, content. Gathered systematically fromthe ETL components for further processing,analysis and modeling

Portal Personalization transactionPortal submits visitor's identification data. REretrieves metadata, compiles aRecommendation’s List and forwards it to the

portal

Personalized DataRecommendations List asserved from RE

Business Users

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Personalization: Data Requirements

User data includes information that can be used to define profiles of the physical user (individual

and/or company) such as:

Demographics: gender, age, socioeconomic data, profession, education level, company

attributes etc

Interests & preferences: communication settings, interests against specific content categories or 

functionality offered (as submitted by the user through registration process)

User experience: experience in the domains of interest, roles etc

Usage data consists of the set of data that describe in detail every single user-portal interaction.

 A usually complex, large volume data set including log file information, session specific data,

content structure.

Environmental data refers to information describing the technological infrastructure enabling

each user to access services and content offered (hardware, software, operating system)

‘Portal data’ refers to information providing structural representation, content definitions, relations,

actions, processes (registration, applications, service activation, inquiries etc)

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