Segmentation Process and Strategy
Segmentation Process…3 Dart’s “Custom Segmentation” Approach ….4 Applications for Segmentation…5 Techniques & Data Used …6 Overview of the Process with Timeline …8 Keeping Segmentation Relevant…10 Further Analysis …11 Segmentation Example…12 Test Case ….13 Contents
Segmentation Process Dart’s “Custom Segmentation” Approach Applications for Segmentation Techniques & Data Used Overview of the Process with Timeline Keeping Segmentation Relevant Further Analysis
Dart builds sophisticated “custom” segmentation models. Purpose: To achieve highly differentiated customer segments that make marketing more efficient and effective. Method: Experienced modelers use a combination of science and intuition to create a custom segmentation scheme.  A good solution requires that the segments be distinct, predictive of behavior, implementable, and reflective of the business needs for which they were created.  We also perform data quality checks and report any problems or questions before we arrive at a final solution.  Results: An elegant cluster solution that is practical, makes sense and can be implemented. Dart’s “Custom Segmentation” Approach
There are many uses for segmentation. These are some examples. Purposes: Needs Based Segmentation  - Auto makers for example design vehicles to match the needs of buyers, ranging from economy cars to luxury cars and minivans to pickup trucks.  Product Segmentation  – Manufacturers diversify products within each needs base to appeal to buyers with different tastes and wealth. Customer Segmentation  – Customers are segmented based on their needs and product preferences. Segments grow or shrink over time as products improve, become obsolete or tastes change.  Niche Segmentation  – Niche segments are characterized by strength in one needs base and product within it. Restaurants are good examples, ranging from delis to Chinese food with décor appealing to McDonald’s patrons to those preferring a three star experience.  Global Segmentation  - Insurance firms and medical and legal practices also use product segmentation, and sometimes attempt to cover all the product space.  In-store Display Segmentation  – Drug stores, grocery stores, book stores, and other retail outlets use segmentation in order to keep like products close to each other within the store, making shopping convenient and cross selling more profitable. Applications for Segmentation
Techniques Techniques to Developing Clusters: Statistical clustering techniques include neural networks, discriminant analysis, factor analysis, hierarchical clustering, and perhaps most commonly, "nearest neighbor" or "k means" algorithms.  All of these approaches determine what variables are similar and dissimilar in statistical terms, forming segments.  The analyst picks the number of clusters through an iterative process, looking for uniqueness between the segments and a number of segments that are practical and manageable from a marketing perspective.  Data Definition: How variables are defined makes a substantial difference in the outcome. Age, for example, can be characterized as a set of age-ranges or as a continuous variable. These characterizations lead to different segmentation solutions. So, selection of the best way to characterize the variables used for segmentation involves considerable judgment, from both a statistical and a business perspective.
Within practical limits, the more data the better, in the initial stages. The data relevant to the segmentation scheme is revealed through the statistical process. But, the solution must make sense and the variables used must make a contribution.  Customer Data:  Transaction Details  – Frequency, amount and timing of purchases, items bought, prices paid, use of cash or credit, and use of coupons. Acquisitions Details  – Marketing channel, promotion type, and address/city. Appended Database Data:  Life Style  – Profession/occupation, vehicle ownership, Internet use, travel, pets, and hobbies. Financial  – Investments, credit card usage and type, living expenses, and credit worthiness. Demographic  –  Age, income, education, gender, marital status, and number of kids. Geographic  – Own/rent, urban/rural, size of city, region, and size of dwelling. Market Research Data:   Behavioral  – Purchase patterns, why they bought, what they use the product for, responsiveness to different marketing channels. Attitudinal  – Product preferences, willingness to try other brands, price sensitivity, shop for convenience, opinion of the company and the competition. Data Used
Data Prep/Hygiene: Data is read into an analytic file. Data records and variable values are examined for accuracy. Records with duplicate match code ids are compared prior to de-duping those records. Variable values are examined to make sure they are within acceptable ranges. Initial Exploratory Analysis: The heart of the work - Data description and looking for explanatory patterns in the data, which lead to a picture of your business, customers, products, environment, and financials. Overview of the Segmentation Process Segmentation Analysis: Selection of the clustering technique and the variables that will be used. Implementation: First, the sample file is scored with the segmentation scheme. Then, all other records that contain the data used to make the segments are scored. The remaining records that do not contain the necessary data (such as those not included in a survey that was used) must be assigned to the segments using other means.  There are several methods to accomplish this, including regression and neural networks. Project Timeline: 15 days to several months depending on the size of the project
While the segments have been defined by this stage, a face still needs to be put on them for them to make sense. Name Assignments:   Typically, descriptive names are given to segments, instead of referring to them as Segments A, B, and C. These names generally reflect the key components that describe them. Descriptive Profiles:   Profiles describe the attributes of each segment. For example, Customers in “Segment A” are 36% more likely to buy frequently than customers in “Segment B.” Some  variables not used in the clustering process are retained for describing the segments. For example, while segments may be based primarily on their behavioral characteristics, it is still worthwhile to note their demographics.  Financial Analysis:   Determine the expected financial performance of each segment. Response indexes and residual income from likelihood of repeat business is often part of the analysis. Completing the Segmentation Process
It's important to monitor the performance of a segmentation scheme over time and recalibrate as necessary.  Shifts in Market Conditions: Work with client to track performance measures for each segment. A monthly performance scorecard is a good mechanism for tracking changes in performance and the company’s position in the market place. Fixed Intervals: A simple alternative to this tracking process is to recalibrate the segmentation scheme at fixed intervals, such as once a year. Keeping Segmentation Relevant
Get the most out of your segmentation strategy. Optimize Profitability through Financial Modeling: Expand the initial financial analysis into an interactive model. This allows  “what-if” scenario testing  to maximize the segmentation mix, marketing mix, mail strategy and product  pricing.  Increase Prices without Losing Sales: Scientific price/incentive test to quantify the price elasticity of demand. This analysis drives the price component of the financial model. Improving Segmentation through Appended Database Data: Database enhancement research with cost/benefit analysis reveals which additional data provides the most predictive power for the investment. Using Market Research in Combination with Segmentation: Validate segments in the real world, Collect data to fine tune the segments, Better understand purchase motivation, behavior, and desirable product attributes, leading to more effective offers, and Better target creative, resulting in better response to solicitations. Further Analysis
Segmentation Example Test Case
The chart to the right shows the distribution of automotive credit card accounts by segment. “Low Spenders”, “Game Players” and “Credit Needy” were the biggest segments. The charts below describe the “Game Players” segment: Segment Highlights: They are high spenders, accumulating as much rebate as possible through the program. They have the highest likelihood to redeem their points They are more likely to own a new car made by the mfg sponsoring the program They have normal age and income distributions Descriptive Profiles
Description:  This example is based on a credit card with an automotive rewards program, where people accumulate a percentage of their purchases towards a new automobile. Revenue is based on credit income and profits from auto sales. Expenses come from redemptions and marketing/operating costs. Key Findings:  Game Players were very costly to the program. Credit Challenged were expensive due to bad debt. Low Spenders were profitable as were Conquest Credit (due to high incremental sales rate). Financial Analysis
Craig Tomarkin DART Marketing, LLC 2333 Congress St. Fairfield, CT 06824 [email_address] 203-259-0676 Fax 419-858-8545 Contact Info

More Related Content

PPT
Risk and return
PDF
Portfolio Diversification
PPTX
The 8 Steps of Credit Risk Management
PDF
Stock Valuation Analysis PowerPoint Presentation Slides
PPTX
Walmart Sales Prediction
PPT
Country risk analysis
PPTX
External factor evaluation
PPTX
MIS Subsystems and its types
Risk and return
Portfolio Diversification
The 8 Steps of Credit Risk Management
Stock Valuation Analysis PowerPoint Presentation Slides
Walmart Sales Prediction
Country risk analysis
External factor evaluation
MIS Subsystems and its types

What's hot (20)

PPTX
Descriptive Analysis.pptx
PPTX
Prescriptive Analytics
PPTX
Scope of accounting
PPTX
Garuda indonesia Strategy Management
PDF
Risk returns analysis
PPT
Market risk
PDF
Earnings multiplier model
PDF
Data Analytics PowerPoint Presentation Slides
PPS
Airline strategy
PPT
Financial Leverage
PDF
99700905 cost-of-capital-solved-problems
PPTX
Types of strategy
PDF
Customer Analytics Best Practice
PPTX
kingfisher & airdeccan merger and leverage buyout of dell-EMC-VMware
PPTX
Capital Asset Pricing Model
PPT
Core Competencies
PPTX
STRATEGIC MANAGEMENT
PPTX
Integration strategy
PDF
Types of Financial Model - Financial Modeling by EduCBA
PPTX
Capital structure-theories
Descriptive Analysis.pptx
Prescriptive Analytics
Scope of accounting
Garuda indonesia Strategy Management
Risk returns analysis
Market risk
Earnings multiplier model
Data Analytics PowerPoint Presentation Slides
Airline strategy
Financial Leverage
99700905 cost-of-capital-solved-problems
Types of strategy
Customer Analytics Best Practice
kingfisher & airdeccan merger and leverage buyout of dell-EMC-VMware
Capital Asset Pricing Model
Core Competencies
STRATEGIC MANAGEMENT
Integration strategy
Types of Financial Model - Financial Modeling by EduCBA
Capital structure-theories
Ad

Viewers also liked (8)

DOCX
About blue dart
PDF
Blue Dart Express Delivery Services: Competition and Strategy
PPTX
Blue Dart Reverse Logistics
PPTX
Financial analysis of fedex and bluedart
PPTX
Blue dart assignment
PPTX
Indian airlines Case Study analysis
PPT
Blue Dart
PPTX
Infibeam by paddu
About blue dart
Blue Dart Express Delivery Services: Competition and Strategy
Blue Dart Reverse Logistics
Financial analysis of fedex and bluedart
Blue dart assignment
Indian airlines Case Study analysis
Blue Dart
Infibeam by paddu
Ad

Similar to Segmentation (20)

PPTX
Allbirds 20180405_New Views on Segmentation Targeting_Final Deliverable.pptx
PDF
PEGA Decision strategy manager (DSM)
PPTX
Mastering Business Analytics - navigating skills and opportunities
PPTX
Unit I-Final MArketing analytics unit 1 ppt
PDF
Customer segmentation approach
PDF
Big Data Analytics for Predicting Consumer Behaviour
PPTX
Recency/Frequency and Predictive Analytics in the gaming industry
PPTX
Data Science, Analytics & Critical Thinking
PPTX
Application of predictive analytics
PDF
Segmentation: Foundation of Marketing Strategy
PPTX
Hair_EOMA_1e_Chap001_PPT.pptx
DOCX
Marketing and HR Analytics
PPT
Competitive Intelligence for Market Researchers: an Exercise-Driven, Interact...
PDF
Enterprations Weekly Strategy, Number 2, December 2016
PPTX
HR analytics
PDF
Category Management of Spencer's Retail
PDF
Care To Compare: More than just a health comparison site
PPTX
WHAT IS BUSINESS ANALYTICS um hj mnjh nit 1 ppt only kjjn
PDF
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Allbirds 20180405_New Views on Segmentation Targeting_Final Deliverable.pptx
PEGA Decision strategy manager (DSM)
Mastering Business Analytics - navigating skills and opportunities
Unit I-Final MArketing analytics unit 1 ppt
Customer segmentation approach
Big Data Analytics for Predicting Consumer Behaviour
Recency/Frequency and Predictive Analytics in the gaming industry
Data Science, Analytics & Critical Thinking
Application of predictive analytics
Segmentation: Foundation of Marketing Strategy
Hair_EOMA_1e_Chap001_PPT.pptx
Marketing and HR Analytics
Competitive Intelligence for Market Researchers: an Exercise-Driven, Interact...
Enterprations Weekly Strategy, Number 2, December 2016
HR analytics
Category Management of Spencer's Retail
Care To Compare: More than just a health comparison site
WHAT IS BUSINESS ANALYTICS um hj mnjh nit 1 ppt only kjjn
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...

More from pankaj prabhakar (6)

PPT
Statistics And Correlation
PPT
PPT
Price As A Competitive Advantage
PPT
Fiscal Policy2000 04
PPT
Foreign Investment In India
PPT
Production Of Aloe Vera
Statistics And Correlation
Price As A Competitive Advantage
Fiscal Policy2000 04
Foreign Investment In India
Production Of Aloe Vera

Segmentation

  • 2. Segmentation Process…3 Dart’s “Custom Segmentation” Approach ….4 Applications for Segmentation…5 Techniques & Data Used …6 Overview of the Process with Timeline …8 Keeping Segmentation Relevant…10 Further Analysis …11 Segmentation Example…12 Test Case ….13 Contents
  • 3. Segmentation Process Dart’s “Custom Segmentation” Approach Applications for Segmentation Techniques & Data Used Overview of the Process with Timeline Keeping Segmentation Relevant Further Analysis
  • 4. Dart builds sophisticated “custom” segmentation models. Purpose: To achieve highly differentiated customer segments that make marketing more efficient and effective. Method: Experienced modelers use a combination of science and intuition to create a custom segmentation scheme. A good solution requires that the segments be distinct, predictive of behavior, implementable, and reflective of the business needs for which they were created. We also perform data quality checks and report any problems or questions before we arrive at a final solution. Results: An elegant cluster solution that is practical, makes sense and can be implemented. Dart’s “Custom Segmentation” Approach
  • 5. There are many uses for segmentation. These are some examples. Purposes: Needs Based Segmentation - Auto makers for example design vehicles to match the needs of buyers, ranging from economy cars to luxury cars and minivans to pickup trucks. Product Segmentation – Manufacturers diversify products within each needs base to appeal to buyers with different tastes and wealth. Customer Segmentation – Customers are segmented based on their needs and product preferences. Segments grow or shrink over time as products improve, become obsolete or tastes change. Niche Segmentation – Niche segments are characterized by strength in one needs base and product within it. Restaurants are good examples, ranging from delis to Chinese food with décor appealing to McDonald’s patrons to those preferring a three star experience. Global Segmentation - Insurance firms and medical and legal practices also use product segmentation, and sometimes attempt to cover all the product space. In-store Display Segmentation – Drug stores, grocery stores, book stores, and other retail outlets use segmentation in order to keep like products close to each other within the store, making shopping convenient and cross selling more profitable. Applications for Segmentation
  • 6. Techniques Techniques to Developing Clusters: Statistical clustering techniques include neural networks, discriminant analysis, factor analysis, hierarchical clustering, and perhaps most commonly, "nearest neighbor" or "k means" algorithms. All of these approaches determine what variables are similar and dissimilar in statistical terms, forming segments. The analyst picks the number of clusters through an iterative process, looking for uniqueness between the segments and a number of segments that are practical and manageable from a marketing perspective. Data Definition: How variables are defined makes a substantial difference in the outcome. Age, for example, can be characterized as a set of age-ranges or as a continuous variable. These characterizations lead to different segmentation solutions. So, selection of the best way to characterize the variables used for segmentation involves considerable judgment, from both a statistical and a business perspective.
  • 7. Within practical limits, the more data the better, in the initial stages. The data relevant to the segmentation scheme is revealed through the statistical process. But, the solution must make sense and the variables used must make a contribution. Customer Data: Transaction Details – Frequency, amount and timing of purchases, items bought, prices paid, use of cash or credit, and use of coupons. Acquisitions Details – Marketing channel, promotion type, and address/city. Appended Database Data: Life Style – Profession/occupation, vehicle ownership, Internet use, travel, pets, and hobbies. Financial – Investments, credit card usage and type, living expenses, and credit worthiness. Demographic – Age, income, education, gender, marital status, and number of kids. Geographic – Own/rent, urban/rural, size of city, region, and size of dwelling. Market Research Data: Behavioral – Purchase patterns, why they bought, what they use the product for, responsiveness to different marketing channels. Attitudinal – Product preferences, willingness to try other brands, price sensitivity, shop for convenience, opinion of the company and the competition. Data Used
  • 8. Data Prep/Hygiene: Data is read into an analytic file. Data records and variable values are examined for accuracy. Records with duplicate match code ids are compared prior to de-duping those records. Variable values are examined to make sure they are within acceptable ranges. Initial Exploratory Analysis: The heart of the work - Data description and looking for explanatory patterns in the data, which lead to a picture of your business, customers, products, environment, and financials. Overview of the Segmentation Process Segmentation Analysis: Selection of the clustering technique and the variables that will be used. Implementation: First, the sample file is scored with the segmentation scheme. Then, all other records that contain the data used to make the segments are scored. The remaining records that do not contain the necessary data (such as those not included in a survey that was used) must be assigned to the segments using other means. There are several methods to accomplish this, including regression and neural networks. Project Timeline: 15 days to several months depending on the size of the project
  • 9. While the segments have been defined by this stage, a face still needs to be put on them for them to make sense. Name Assignments: Typically, descriptive names are given to segments, instead of referring to them as Segments A, B, and C. These names generally reflect the key components that describe them. Descriptive Profiles: Profiles describe the attributes of each segment. For example, Customers in “Segment A” are 36% more likely to buy frequently than customers in “Segment B.” Some variables not used in the clustering process are retained for describing the segments. For example, while segments may be based primarily on their behavioral characteristics, it is still worthwhile to note their demographics. Financial Analysis: Determine the expected financial performance of each segment. Response indexes and residual income from likelihood of repeat business is often part of the analysis. Completing the Segmentation Process
  • 10. It's important to monitor the performance of a segmentation scheme over time and recalibrate as necessary. Shifts in Market Conditions: Work with client to track performance measures for each segment. A monthly performance scorecard is a good mechanism for tracking changes in performance and the company’s position in the market place. Fixed Intervals: A simple alternative to this tracking process is to recalibrate the segmentation scheme at fixed intervals, such as once a year. Keeping Segmentation Relevant
  • 11. Get the most out of your segmentation strategy. Optimize Profitability through Financial Modeling: Expand the initial financial analysis into an interactive model. This allows “what-if” scenario testing to maximize the segmentation mix, marketing mix, mail strategy and product pricing. Increase Prices without Losing Sales: Scientific price/incentive test to quantify the price elasticity of demand. This analysis drives the price component of the financial model. Improving Segmentation through Appended Database Data: Database enhancement research with cost/benefit analysis reveals which additional data provides the most predictive power for the investment. Using Market Research in Combination with Segmentation: Validate segments in the real world, Collect data to fine tune the segments, Better understand purchase motivation, behavior, and desirable product attributes, leading to more effective offers, and Better target creative, resulting in better response to solicitations. Further Analysis
  • 13. The chart to the right shows the distribution of automotive credit card accounts by segment. “Low Spenders”, “Game Players” and “Credit Needy” were the biggest segments. The charts below describe the “Game Players” segment: Segment Highlights: They are high spenders, accumulating as much rebate as possible through the program. They have the highest likelihood to redeem their points They are more likely to own a new car made by the mfg sponsoring the program They have normal age and income distributions Descriptive Profiles
  • 14. Description: This example is based on a credit card with an automotive rewards program, where people accumulate a percentage of their purchases towards a new automobile. Revenue is based on credit income and profits from auto sales. Expenses come from redemptions and marketing/operating costs. Key Findings: Game Players were very costly to the program. Credit Challenged were expensive due to bad debt. Low Spenders were profitable as were Conquest Credit (due to high incremental sales rate). Financial Analysis
  • 15. Craig Tomarkin DART Marketing, LLC 2333 Congress St. Fairfield, CT 06824 [email_address] 203-259-0676 Fax 419-858-8545 Contact Info