Predictive Customer Analytics
Offered By: LinkedIn Learning
Course Description
Overview
Learn about the customer life cycle and how predictive analytics can improve the customer journey. Explore using predictive analytics to identify, attract, and retain customers.
Syllabus
Introduction
- The Power of Predictive Analytics
- Expectations and course organization
- How to use the exercise files
- The importance of customer analytics
- The customer lifecycle
- Apply analytics to the customer lifecycle
- Sources of customer data
- The customer analytics process
- Use case: Online computer store
- The customer acquisition process
- Find high propensity prospects
- Recommend best channel for contact
- Offer chat based on visitor propensity
- Use case: Determine customer propensity
- Upselling and cross-selling
- Find items bought together
- Create customer group preferences
- User-item affinity and recommendations
- Use case: Recommend items
- Generate customer loyalty
- Create customer value classes
- Discover response patterns
- Predict customer lifetime value
- Use case: Predict CLV
- Improve customer satisfaction
- Predict intent of contact
- Find unsatisfied customers
- Group problem types
- Use case: Group problem types
- Prevent customer attrition
- Predict customers who might leave
- Find incentives
- Discover customer attrition patterns
- Use case: Customer patterns
- Devise customer analytics processes
- Choose the right data
- Design data processing pipelines
- Implement continuous improvement
- Next steps and additional resources
Taught by
Kumaran Ponnambalam
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