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https://bbs.pinggu.org/thread-1528282-1-1.html。 以下是目录: Part 1 The Basics Chapter 1 Introduction 1.1 What Is Segmentation in the Context of CRM? 1.2 Types of Segmentation and Methods 1.2.1 Customer Profiling 1.2.2 Customer Likeness Clustering 1.2.3 RFM Cell Classification Grouping 1.2.4 Purchase Affinity Clustering 1.3 Typical Uses of Segmentation in Industry 1.4 Segmentation as a CRM Tool 1.5 References Chapter 2 Why Segment? The Motivation for Segment-Based Descriptive Models 2.1 Mass Customization Instead of Mass Marketing 2.2 Specialized Promotions or Communications by Segment Groups 2.3 Profiling of Customers and Prospects 2.3.1 Example 2.1: The Data Assay Project 2.3.2 Example 2.2: Customer Profiling of the BUYTEST Data Set 2.3.3 Additional Exercise 2.4 References Chapter 3 Distance: The Basic Measures of Similarity and Association 3.1 What Is Similar and What Is Not 3.2 Distance Metrics As a Measure of Similarity and Association 3.3 What Is Clustering? The k-Means Algorithm and Variations. 3.3.1 Variations of the k-Means Algorithm 3.3.2 The Agglomerative Algorithm 3.4 References Part 2 Segmentation Galore Chapter 4 Segmentation Using a Cell-Based Approach 4.1 Introduction to Cell-Based Segmentation 4.2 Segmentation Using Cell Groups—RFM 4.2.1 Other Cell Types for Segmentation 4.3 Example Development of RFM Cells 4.4 Tree-Based Segmentation Using RFM 4.5 Using RFM and CRM—Customer Distinction 4.6 Additional Exercise 4.7 References 4.8 Additional Reading Chapter 5 Segmentation of Several Attributes with Clustering 5.1 Motivation for Clustering of Customer Attributes: Beginning CRM 5.2 How Can I Better Understand My Customer Base of Over 100,000? 5.3 Using a Decision Tree to Create Cluster Segments 5.4 References 5.5 Additional Reading Chapter 6 Clustering of Many Attributes 6.1 Closer to Reality of Customer Segmentation 6.2 Representing Many Attributes in Multi-dimensions 6.3 How Can I Better Understand My Customers of Many Attributes? 6.4 Data Assay and Profiling 6.5 Understanding What the Cluster Segmentation Found 6.6 Planning for Customer Attentiveness with Each Segment 6.7 Creating Cluster Segments on Very Large Data Sets 6.8 Additional Exercise 6.9 References Chapter 7 When and How to Update Cluster Segments 7.1 What Is the Shelf Life of a Model, and How Can It Affect Your Results? 7.2 How to Detect When Your Clustering Model Should Be Updated 7.3 Testing New Observations and Score Results 7.4 Other Practical Considerations 7.5 Additional Reading Chapter 8 Using Segments in Predictive Models 8.1 The Basis of Breaking Up the Data Space 8.2 Predicting a Segment Level 8.3 Using the Segment Level Predictions for Customer Scoring 8.4 Creating Customer Value Segments 8.5 References 8.6 Additional Exercises Part 3 Beyond Traditional Segmentation Chapter 9 Clustering and the Issue of Missing Data 9.1 Missing Data and How It Can Affect Clustering 9.2 Analysis of Missing Data Patterns 9.3 Effects of Missing Data on Clustering. 9.4 Methods of Missing Data Imputation 9.5 Obtaining Confidence Interval Estimates on Imputed Values 9.6 Using the SAS Enterprise Miner Imputation Node 9.7 References Chapter 10 Product Affinity and Clustering of Product Affinities 10.1 Motivation of Estimating Product Affinity by Segment 10.2 Estimating Product Affinity Using Purchase Quantities 10.3 Combining Product Affinities by Cluster Segments 10.4 Pros and Cons of Segment Affinity Scores. 10.5 Issues with Clustering Non-normal Quantities 10.6 Approximating a Graph-Theoretic Approach Using a Decision Tree 10.7 Using the Product Affinities for Cross-Sell Programs 10.8 Additional Exercises 10.9 References Chapter 11 Computing Segments Using SOM/Kohonen for Clustering 11.1 When Ordinary Clustering Does Not Produce Desired Results 11.2 What Is a Self-Organizing Map? 11.3 Computing and Applying SOM Network Cluster Segments 11.4 Comparing Clustering with SOM Segmentation 11.5 Customer Distinction Analysis Example 11.6 Additional Exercises 11.7 References Chapter 12 Segmentation of Textual Data 12.1 Background of Textual Data in the Context of CRM 12.2 Notes on Text Mining versus Natural Language Processing 12.3 Simple Text Mining Example 12.4 Text Document Clustering 12.5 Using Text Mining in CRM Applications 12.6 References Part 4 Advanced Segmentation Applications Chapter 13 Clustering of Product Associations 13.1 What Is Association Analysis and Its Uses in Business? 13.2 Market Basket Association Analysis 13.3 Revisiting Product Affinity Using Clustered Associations 13.4 The Business and Technical Side of Clustering Associations. 13.5 References Chapter 14 Predicting Attitudinal Segments from Survey Responses 14.1 Typical Market Research Surveys. 14.2 Match-back of Survey Responses 14.3 Analysis of Survey Responses: An Overview 14.4 Developing a Predictive Segmentation Model from a Survey Analysis 14.5 Issues with Scoring a Predictive Segmentation on Customer or Prospect Data 14.6 Assessing the Confidence of Predicted Segments 14.7 Business Implications for Using Attitudinal Segmentation 14.8 References Chapter 15 Combining Attitudinal and Behavioral Segments 15.1 Survey of Methods of Ensemble Segmentations 15.2 Two Methods for Combining Attitudinal and Behavioral Segments 15.3 Presenting the Business Case Simply from a Complex Analysis 15.4 References 15.5 Additional Exercise Chapter 16 Segmentation of Customer Transactions 16.1 Measuring Transactions as a Time Series. 16.2 References 16.3 Additional Reading 16.4 Additional Exercise |
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