The Lending Club Case study of Upgrad & IIITB | Global Program in Machine Learning & AI
Based on the lending data of company, we analyze and exploit all factors that have strong relationship with the status of loans.
You work for a consumer finance company which specialises in lending various types of loans to urban customers. When the company receives a loan application, the company has to make a decision for loan approval based on the applicant’s profile. Two types of risks are associated with the bank’s decision:
The data given below contains information about past loan applicants and whether they ‘defaulted’ or not. The aim is to identify patterns which indicate if a person is likely to default, which may be used for taking actions such as denying the loan, reducing the amount of loan, lending (to risky applicants) at a higher interest rate, etc.
In this case study, you will use EDA to understand how consumer attributes and loan attributes influence the tendency of default.
When a person applies for a loan, there are two types of decisions that could be taken by the company:
- Fully paid: Applicant has fully paid the loan (the principal and the interest rate)
- Current: Applicant is in the process of paying the instalments, i.e. the tenure of the loan is not yet completed. These candidates are not labelled as 'defaulted'.
- Charged-off: Applicant has not paid the instalments in due time for a long period of time, i.e. he/she has defaulted on the loan
- The total payment below 10000$ which has high rate of default loans can be considered as the threshold for business to apply in their rules-based procedure
- The business should draws some specific rules that target only higher grades (A->C) to increases sales or focus on lower grades (D->G) to reduce risks
- Interest rate over 12% is the point where business should put more efforts to validate and analyze the potential risk of lending cases to reduce the bad rate
- <5000$ in Principal Received to Date is the package that 75% charged off cases can not reached
- Most of lending cases have Lending Purposes come from Debt, Credit Card, Car and Home Improvement.
- Python - Version 3.8.10 64-bit
- Pandas - Version 1.3.0
- Numpy - Version 1.21.0
- Seaborn - Version 0.12.1
- Matplotlib - Version 3.4.2
Created by [@bigredbug47] - feel free to contact me!