FNB GENIUS

CASE STUDY

Repurchase Propensity Score for a Pizza Chain

BUSINESS PROBLEM

  • Create a solution to identify the specific customers who are likely to make a purchase in the future, enabling micro-targeting and upsell / cross-sell opportunities .

PERFORMANCE

  • The model has a good discriminatory power to classify the customers as ‘likely to repurchase’ or ‘not’.
  • Testing Scenarios – the model could identify more than 58% of the target customers who had the highest Repurchase Probability Score.

SOLUTION

  • Computed the Repurchase Probability Score by leveraging the Poisson Regression Model.
  • Transaction Data was used to analyse Purchase pattern behaviour.
  • Performance metric checks on the Validation data were performed to select the final model.
  • The final process returns ‘Repurchase Propensity Score’ for all customers, finally segmented into 10 bands.

BENEFITS

  • Provides a guide to develop marketing strategies based on the prediction that the customer will be purchasing in the next period based on past data.
  • Implementation of advanced analytics solutions to drive business growth and decision making.
  • Promotes ‘Customer Retention’ and ‘Customer Experience’.

PERFORMANCE OF THE MODEL - KS PLOT