The base that I used has information on approximately 9k customers and how they use their credit cards.
I will analyze the CC GENERAL.csv file with 8950 instances, that is, almost 9k clients, and I'm gonna have columns that represent different attributes: customer id, balance (limit available on the account), frequency that the balance is changed, value for purchases in cash and in installments, among others. There are a total of 18 attributes.
. Discover how to validate and interpret results with data without labels.
. Learn techniques that will help you interpret cluster information.
. Extract information about customer behavior using data from a credit card company.
. Use scikit-learn to generate clusters and calculate different validation metrics.