semasuka/Loan-amount-prediction-regression
Predicting how much loan will be approved
This project helps loan officers or financial analysts quickly estimate the loan amount an applicant might be approved for. You input various details about a loan applicant, such as their credit score, and it outputs a predicted loan amount. It's designed for professionals in lending institutions who need a data-driven prediction for loan applications.
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Use this if you are a loan officer or financial institution employee seeking a data-driven prediction for how much loan an applicant is likely to receive based on their profile.
Not ideal if you need to determine loan eligibility or risk, as this tool focuses solely on predicting the approved amount, not whether a loan should be granted at all.
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18
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10
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Oct 19, 2024
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