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A novel ensemble based model for Intrusion Detection System
Conference paper   Open access

A novel ensemble based model for Intrusion Detection System

Nikhita Bhattacharya, Arnav Subudhi, Sushruta Mishra, Vandana Sharma, Adedapo Paul Aderemi and Celestine Iwendi
2024 5th International Conference on Computing, Power, and Communication Technologies (IC2PCT) (Galgotias University, India, 09/02/2024–10/02/2024)
15/01/2024

Abstract

Network security Intrusion Detection System Random Forest algorithm accuracy
In the present interconnected world, the increasing reliance on computer networks has made them susceptible to multiple security threats and intrusions. Intrusion Detection Systems (IDS) is essential for shielding these networks by detecting and mitigating potential threats in real-time. This research paper presents an in-depth study of employing the Random Forest algorithm for building an effective intrusion detection System. The proposed IDS uses the power of the Random Forest algorithm, a popular ensemble learning technique, to detect various types of intrusions in network traffic effectively. The algorithm integrates more than one decision trees to produce a robust and accurate classifier, capable of handling large-scale and complex datasets typical of network traffic. The proposed system can be used in various industries and sectors to protect critical assets, ensuring the uninterrupted operation of computer networks. Evolving cyber threats have encouraged further research into ensemble analytics methods to increase the resilience of Intrusion Detection Systems in an ever-changing threat landscape.
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