Machine learning-based approaches for intrusion detection

No Thumbnail Available

Date

2023

Journal Title

Journal ISSN

Volume Title

Publisher

Université M’hamed Bougara de Boumerdes : Institut de Genie Electrique et Electronique

Abstract

The rapid increase in network security threats necessitates the development of effec- tive intrusion detection model capable of identifying and mitigating malicious activities. This approach presents the development and evaluation of an intrusion detection model utilizing various machine learning algorithms that provide a potential pathway for at- tacks detection. The model is designed to detect and mitigate malicious activities within a network environment. To train and test the machine learning models, a comprehensive dataset sourced from Kaggle is employed, encompassing a wide range of attack scenarios and normal network behaviors. The models are evaluated using classificatio nevaluation metrics such as accuracy, precision, and recall, demonstrating their capability to accu- rately classify instances and identify potential threats. The primary objective of this approach is to enhance the detection of attacks irrespective of their types, while minimiz- ing the occurrence of false positives. The results obtained highlight the effectivenes sof the intrusion detection model in providing a proactive network security solution, enabling timely detection and response to malicious activities. The finding so fthi sprojec tcon- tribute to the fiel do fintrusio ndetection ,pavin gth ewa yfo rimprove dsecurit ymeasures in network environments.

Description

66p.

Keywords

Machine learning, Intrusion detection

Citation

Collections

Endorsement

Review

Supplemented By

Referenced By