As we 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:
- If the applicant is likely to repay the loan, then not approving the loan results in a loss of business to the company.
- If the applicant is not likely to repay the loan, i.e. he/she is likely to default, then approving the loan may lead to a financial loss for the company.
- The company wants to understand the driving factors (or driver variables) behind loan default (loan_status = 'Charged Off'), i.e. the variables which are strong indicators of default. The company can utilise this knowledge for its portfolio and risk assessment
- What is the background of your project : Understaing the data set , cleaning the data and deriver the variables from it and finding conclusions of the applications.
- What is the business probem that your project is trying to solve : portfolio and risk assessment
- What is the dataset that is being used : we are using the leading club case study data set to analysis the problem format is .csv
- Conclusion 1 from the analysis:
- As per the analysis made more loan interest rate and borrower from rent and mortgage are more “charged off” chances.
- Conclusion 2 from the analysis:
- Interest rate increasing clearly that grades moving A to G, as the higher the grade higher the “charged off” <<<<<<< HEAD
- Conclusion 3 from the analysis:
- Annual income as the borrowers in very low means their are then to more “charged off”
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- Conclusion 3 from the analysis:
- Annual income as the borrowers in very low means their are then to more “charged off”
ba026c0b181c863ddf25f9bab3432b5a4a00e445
- pandas version - version 1.3.4
- numpy version - version 1.20.3
- sea born version - version 0.11.2
Give credit here.
- This project was inspired by Fintech compnay and online leding company for small loan
- References for pandas and matplotlibs
- https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.qcut.html
- https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.pivot.html
- https://matplotlib.org/stable/api/_as_gen/matplotlib.pyplot.boxplot.html
- This project was based on fintech company like ZestMoney and paytm etc..
Satyanarayana k & vinoth.kanagarathinam batch -1993 PG in ML and AI -feel free to contact us!