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This repository contains Python code for researching Intrusion Detection Systems (IDS) using various algorithms, including the Lion Optimization Algorithm (LOA), Artificial Bee Colony (ABC), and Grey Wolf Optimization (GWO).

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LinuxDevil/Research-IDS

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Intrusion Detection System (IDS) Research Repository

This repository contains Python code for researching Intrusion Detection Systems (IDS) using various algorithms, including the Lion Optimization Algorithm (LOA).

Introduction

An IDS is a security technology that monitors and analyzes network traffic or system events for signs of unauthorized access, malicious activities, or policy violations. This research project aims to develop and evaluate IDS algorithms that can improve the detection and prevention of cyber attacks, data breaches, and other security incidents.

This repository contains Python code for implementing and evaluating various IDS algorithms, including the LOA. It also includes several datasets for training and testing these algorithms.

Getting Started

To use the code in this repository, you will need Python 3 and several Python packages, including numpy, pandas, scikit-learn, and matplotlib. You can install these packages using pip:

bashCopy code

pip install numpy pandas scikit-learn

To download the code and datasets from this repository, you can use git:

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git clone https://github.com/LinuxDevil/Research-IDS.git

Algorithms

This repository currently includes implementations of the following IDS algorithms:

  • Lion Optimization Algorithm (LOA)
  • ...

Datasets

This repository includes several datasets for training and testing IDS algorithms. These datasets are stored in the data directory and are in CSV format. Each dataset includes a set of features and a binary label indicating whether an event is a normal or an attack.

The current datasets are:

  • NSL-KDD: This is a dataset of network traffic that contains both normal and attack events. It is a modified version of the KDD Cup 1999 dataset and is commonly used for evaluating IDS algorithms.

Usage

To use the code in this repository, you can run the main Python scripts in the src directory. These scripts include:

  • hyper_param_loa.py: Runs the LOA algorithm on a given IDS function with hyperparameters specified in a parameter grid.
  • 'loa_cnn': Runs the LOA algorithm with CNN
  • more to come

To run one of these scripts, you can use Python:

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python src/hyper_param_loa.py

Contributing

Contributions to this repository are welcome. If you would like to contribute, please follow these steps:

  1. Fork the repository.
  2. Create a new branch for your changes.
  3. Make your changes and commit them to your branch.
  4. Create a pull request to merge your changes into the main branch of the repository.

About

This repository contains Python code for researching Intrusion Detection Systems (IDS) using various algorithms, including the Lion Optimization Algorithm (LOA), Artificial Bee Colony (ABC), and Grey Wolf Optimization (GWO).

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