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CRM Chapter 9 Analytics
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Analytics Collection, extraction, modification, measurement, identification, and reporting of information designed to be useful
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Types of Analytics Descriptive – Historic look at customer behavior, organization performance, or customer segment’s habits Predictive – “Could be if”, Models of possible and scoring likelihood of achieving possibility by individuals, Projecting by combining past performance and other factors
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Segmentation An early step in creating “actionable intelligence” from data Analytics help better understand customers, target appropriate segments with offers, and make efficient decisions
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Modeling and scoring Modeling – Not profiling, Descriptive focus on predictive behavior Compares customer profile to behaviors of similar profiles then makes weighted prediction RFM Analysis is common marketing model
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Scoring Getting results from predictive analytics Explores customer history, behavior and other factors to make prediction Eg FICO (Fair Isaac Corporation rating) Payment history (35%), Amounts owed (30%), Length of credit history (15%), New credit (15%), Types of credit used (10%)
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Validation Tests the predicted results to ensure the sample was not biased Risk Analysis: Potential for disease, bankruptcy, eating a banana with adverse reaction, walking down a street and collapsing {credit, life insurance, health insurance}
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Measurement and tracking How to collect data Humans love stats Compare results with objectives/expectations
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Technology 3 software types: OLAP – data from different dimensions Query – Ask questions about patterns or details in data Data mining – Searches for patterns or correlations
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Business Intelligence (BI) Ability to understand and influence customers, products, services, etc to increase performance and income
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