Machine Learning Algorithms on NSL-KDD dataset
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Updated
May 30, 2019 - Jupyter Notebook
Machine Learning Algorithms on NSL-KDD dataset
This is a software application to detect network intrusion by monitoring a network or system for malicious activity and predicts whether it is Normal or Abnormal(attacked with intrusion classes like DOS/PROBE/R2L/U2R).
A comparison between Statistical, Machine Learning, PCA, SVD, and REF methods
Feature based analysis using ML classifiers on the NSL-KDD Dataset
This is a software application to detect network intrusion by monitoring a network or system for malicious activity and predicts whether it is Normal or Abnormal(attacked with intrusion classes like DOS/PROBE/R2L/U2R).
This is a software application to detect network intrusion by monitoring a network or system for malicious activity and predicts whether it is Normal or Abnormal(attacked with intrusion classes like DOS/PROBE/R2L/U2R).
Code for intrusion detection system based on "Intrusion Detection System Using Machine Learning Algorithms" tutorial on Geeksforgeeks and Intrusion Detection on NSL KDD Github repository.
Creating an Intrusion Detection System
AN Intrusion Detection System using LSTM deep learning model to detect anomalous network Integrated with SDN POX controller to analyze and threats in real time
Creación de un Sistema de detección de intrusiones utilizando BPSO y SVM
A Feed-Forward and Pattern Recognition ANN Model for Network Intrusion Detection
Network Intrusion Detection System
This project was an attempt to use ML techniques to identify and prevent DDOS attacks.
Comparative Analysis of Deep Learning and Machine Learning Models for Network Intrusion Detection
Performance Evaluation of Supervised Machine Learning Algorithms for Intrusion Detection
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