Skip to content

Exploratory Data Analysis of a bank dataset to understand credit risk factors using visualization and statistical methods.

Notifications You must be signed in to change notification settings

JatinTaiwala/Helped-identify-patterns-for-loan-defaulters

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

7 Commits
 
 
 
 
 
 

Repository files navigation

Helped identify patterns for loan defaulters

Introduction

Credit risk analysis is an essential component of lending decisions in the banking industry. Understanding the factors that contribute to credit risk is crucial for managing loan portfolios and ensuring the financial health of lending institutions. The objective of this project is to analyze the data and identify key factors that contribute to credit risk using advanced statistical methods and visualizations.

Datasets

The two datasets used in this project are:

"Current Application" dataset: Contains information about customers' loan applications, including credit scores, income, loan amount, and whether the loan was approved or not.

"Previous Application" dataset: Contains information about customers' previous loan applications, including the loan amount, loan type, and status.

Installation

To run the code, you need to install the following dependencies:

Python 3.x Jupyter Notebook Pandas NumPy Seaborn Matplotlib

Results

The analysis revealed several key factors that contribute to credit risk in lending, including low credit score, high debt-to-income ratio, and low income. The project also identified interesting trends in the data, such as the relationship between loan purpose and credit risk.

Conclusion

This project provides an overview of credit risk analysis using advanced statistical methods and visualizations. By identifying key credit risk factors, the project helps lending institutions make better-informed lending decisions and manage their loan portfolios effectively.

About

Exploratory Data Analysis of a bank dataset to understand credit risk factors using visualization and statistical methods.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages