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IBM 322 - Course Project

Introduction

The escalating incidence of internal attacks across computer networks has raised significant concerns among service providers. Safeguarding a computer network against malicious activities, such as unauthorized user access, including from insiders, necessitates the implementation of precise intrusion detection systems.
The objective of intrusion detection learning is to develop a predictive or categorical model with the capability to differentiate between attacks and normal connections. These network attacks can be broadly categorized into four major types:

  • DOS/DDOS (Denial of Service/ Distributed Denial of Service Attacks)
  • Probing
  • U2R (User to Root privelege escalation)
  • R2L (Remote to Local intruder logins)

We hypothesize that traditional machine learning algorithms will not suffice and there exists a need for a sequential neural network architecture to achieve full classification potential.

Project Report

The detailed Project Report can be found here.

Contributors

Abhijna Raghavendra Anjali Mansi Gupta Disha Chetan Patil Swati Singh
Abhijna Raghavendra Anjali Mansi Gupta Disha Chetan Patil Swati Singh