Loan Eligibility Prediction for Customers
This dataset is taken from one of the practice problem on Analytics Vidhya. This dataset contains 614 rows and 13 columns. These details are Gender, Marital Status, Education, Number of Dependents, Income, Loan Amount, Credit History and others.
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Loan_ID:- Unique Loan ID
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Gender:- Male/ Female
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Married:- Applicant married (Y/N)
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Dependents:- Number of dependents
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Education:- Applicant Education (Graduate/ Under Graduate)
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Self_Employed:- Self employed (Y/N)
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ApplicantIncome:- Applicant income
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CoapplicantIncome:- Coapplicant income
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LoanAmount:- Loan amount in thousands
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Loan_Amount_Term:- Term of loan in months
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Credit_History:- credit history meets guidelines
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Property_Area:- Urban/ Semi Urban/ Rural
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Loan_Status:- (Target) Loan approved (Y/N)
The goal of this project is to automate the loan eligibility process (real time) based on customer detail provided while filling online application form.
Accuracy
Ongoing