Integration of a Customer Lifetime Value metric for a mid-sized US based Retail Bank to assess the value of its customers over the course of the relationship
Client: An mid-sized US retail bank
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Objective
The credit card division of the client bank wanted us to develop a metric to assess the value of its customers (i.e. Customer Lifetime Value or CLV) during the course of their relationship with the firm
The individual-level transaction data provided by the bank, spanning January 2008 to August 2011, was used for estimating and testing – 6,706,920 transactions by 15,243 customers
CRISIL's solution
Developed probability-based models to forecast the number of transactions using a Pareto/NBD model
Developed probability based models to forecast average dollar value per transactions using a Gamma/Gamma model
Estimated values (CLV) helped to classify customers into different groups
An open source software R was used for this data-intensive implementation
Client impact
CLV modeling helped the client in answering the following three questions: 1. How frequently does the customer use the credit card; 2. How much do they spend on average; 3. and How much does the firm need to spend to keep them
The CLV metrics helped the decision makers in focusing more on the attractive and profitable customer segments
The CLV metrics also helped the customer-facing employee of the client to select the right customer and devise specific campaigns, promotions and discounts
The model developed has been integrated into the client’s systems and is now a key driver of its sales and marketing strategies
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