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verify-tagAutomobile Loan Default Dataset

financebankingautomobiles and vehiclesbeginnerlogistic regressionpython

12

已售 0
11.34MB

数据标识:D17171510373336647

发布时间:2024/05/31

以下为卖家选择提供的数据验证报告:

数据描述

A non-banking financial institution (NBFI) or non-bank financial company (NBFC) is a Financial Institution that does not have a full banking license or is not supervised by a national or international banking regulatory agency. NBFC facilitates bank-related financial services, such as investment, risk pooling, contractual savings, and market brokering.

An NBFI is struggling to mark profits due to an increase in defaults in the vehicle loan category. The company aims to determine the client’s loan repayment abilities and understand the relative importance of each parameter contributing to a borrower’s ability to repay the loan.

Goal:

The goal of the problem is to predict whether a client will default on the vehicle loan payment or not. For each ID in the Test_Dataset, you must predict the “Default” level.

Datasets

The problem contains two datasets, Train_Dataset and Test_Dataset. Model building is to be done on Train_Dataset and the Model testing is to be done on Test_Dataset. The output from the Test_Dataset is to be submitted to the Hackathon platform.

Metric to measure

The metric to measure is the F1_Score. F1_Score is the harmonic mean of Recall and Precision. In this Hackathon, you will get the F1_Score of 1. Please visit the link for more details on F1_Score- https://en.wikipedia.org/wiki/F-score

Submission File Format:

You should submit a CSV file with exactly 80900 entries plus a header row.

https://en.wikipedia.org/wiki/F-score (more information on F-score can be found in adjacent link)

The file should have exactly two columns

● ID (sorted in any order) ● Default (contains 0 & 1, 1 represents default)

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Automobile Loan Default Dataset
12
已售 0
11.34MB
申请报告