Bank Loan Modelling dataset from Kaggle.
Suppose department team wants to build a model that will help them identify the potential customers who have a higher probability of purchasing the loan. This will increase the success ratio while at the same time reduce the cost of the campaign.
Features:
- Dataset: Sample Data
- Sample Notebook: Banking_Loan.ipynb
Column | Description |
---|---|
Age | Customer age in completed years |
Experience | Customer professional experience years |
Income | Customer annual income ($000) |
ZIP Code | Customer home address ZIP code |
Family | Customer family size |
CCAvg | Customer average spending on credit cards per month ($000) |
Education | Customer Education - Level. 1: Undergraduate; 2: Graduate; 3: Advanced/Professional |
Mortgage | Customer mortgage value ($000) |
Personal Loan | Did this customer accept the personal loan offered in the last campaign? |
Securities Account | Does the customer have a securities account with the bank? |
CD Account | Does the customer have a certificate of deposit (CD) account with the bank? |
Online | Does the customer use internet banking service? |
Credit Card | Does the customer use a credit card issued by Universal Bank? |
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