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Loan Repayment Prediction Project
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abhisheks008 authored Jul 14, 2024
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368 changes: 368 additions & 0 deletions Loan Repayment Prediction/Datasets/test.csv

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615 changes: 615 additions & 0 deletions Loan Repayment Prediction/Datasets/train.csv

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1,586 changes: 1,586 additions & 0 deletions Loan Repayment Prediction/Model/Loan Repayment Prediction.ipynb

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120 changes: 120 additions & 0 deletions Loan Repayment Prediction/README.md
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# Loan Repayment Prediction

## Overview

Welcome to the Loan Repayment Prediction Project! This project aims to build a predictive model to identify the likelihood of a loan application being approved. Leveraging machine learning techniques, this project helps financial institutions streamline their loan approval processes and minimize risks.

## Table of Contents

- [Project Description](#project-description)
- [Data Description](#data-description)
- [Installation](#installation)
- [Usage](#usage)
- [Modeling](#modeling)
- [Results](#results)
- [Contributing](#contributing)
- [License](#license)
- [Contact](#contact)

## Project Description

The Loan Repayment Prediction Project utilizes various machine learning algorithms to predict loan approvals based on applicant information. The primary goal is to create a model that accurately predicts whether a loan should be approved, thus aiding financial institutions in decision-making.

## Data Description

The dataset used in this project contains information about loan applicants, including:

- **Applicant Information**: Gender, Marital Status, Education, Number of Dependents, etc.
- **Financial Information**: Applicant Income, Co-applicant Income, Loan Amount, Loan Amount Term, Credit History, etc.
- **Loan Information**: Loan ID, Loan Status, Property Area, etc.

## Installation

To run this project, you'll need to have Python installed. Follow the steps below to set up the project:

1. Clone the repository:
```bash
git clone https://github.com/aviralgarg05/Loan-Repayment-Prediciton.git
```
2. Navigate to the project directory:
```bash
cd Loan-Prediciton-Project
```
3. Install the required dependencies:
```bash
pip install -r requirements.txt
```

## Usage

To use the project, follow these steps:

1. Preprocess the data by running the preprocessing script:
```bash
python preprocess.py
```
2. Train the model using the training script:
```bash
python train_model.py
```
3. Evaluate the model using the evaluation script:
```bash
python evaluate_model.py
```

## Modeling

This project explores various machine learning models, including:

- **Logistic Regression**
- **Decision Trees**
- **Random Forest**
- **Gradient Boosting**
- **Support Vector Machine**

Each model is evaluated based on its accuracy, precision, recall, and F1 score. The best-performing model is selected for predicting loan approvals.

## Results

1. The Loan Status is heavily dependent on the Credit History for Predictions.
2. The Logistic Regression algorithm gives us the maximum Accuracy (79% approx) compared to the other Machine Learning Classification Algorithms.

| Model | Accuracy |
|--------------------|--------------------|
| Logistic Regression| 0.7852760736196319 |
| SVM | 0.6503067484662577 |
| Decision Tree | 0.7116564417177914 |
| KNN | 0.6196319018404908 |

The final model demonstrates strong predictive power.

## Contributing

Contributions are welcome! If you'd like to contribute to this project, please follow these steps:

1. Fork the repository.
2. Create a new branch:
```bash
git checkout -b feature-branch
```
3. Make your changes and commit them:
```bash
git commit -m 'Add new feature'
```
4. Push to the branch:
```bash
git push origin feature-branch
```
5. Create a Pull Request.

## License

This project is licensed under the MIT License. See the [LICENSE](LICENSE) file for more details.

## Contact

For any questions or suggestions, please feel free to contact:

- **Name**: Aviral Garg
- **Email**: [[email protected]](mailto:[email protected])
- **GitHub**: [aviralgarg05](https://github.com/aviralgarg05)
6 changes: 6 additions & 0 deletions Loan Repayment Prediction/requirements.txt
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numpy==1.23.5
pandas==2.0.3
matplotlib==3.7.2
seaborn==0.12.2
scikit-learn==1.3.0

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