Innovative Machine Learning Algorithms for Classification and Intrusion Detectionv By IJISRT

Author:

Malik Pankaj,Jhala Parag,Sharma Vedanshi,Parsai Vaishnavi,Pandya Kirti

Abstract

With the escalating sophistication of cyber threats, the need for robust intrusion detection systems has become paramount in safeguarding information systems. This research addresses the limitations of traditional methods by proposing and evaluating innovative machine learning algorithms for classification in intrusion detection. The study explores a diverse set of algorithms designed to enhance accuracy, efficiency, and adaptability in the dynamic landscape of cybersecurity. The introduction provides a context for the research, emphasizing the critical role of intrusion detection in contemporary cybersecurity. A comprehensive literature review underscores the shortcomings of existing methodologies and sets the stage for the introduction of novel machine learning approaches. The research methodology outlines the dataset, evaluation metrics, and the training/testing process, ensuring transparency and replicability. The heart of the paper lies in the exploration of innovative machine learning algorithms. Each algorithm is introduced, highlighting unique features and innovations. The experimental results showcase the performance of these algorithms, with detailed comparisons against traditional counterparts. The discussion section interprets the results, emphasizing the practical implications and potential advancements these algorithms bring to the field. Addressing challenges encountered during implementation, the paper outlines future directions for research, providing a roadmap for continued innovation. The conclusion succinctly summarizes key findings, accentuating the groundbreaking contributions of the proposed machine learning algorithms to intrusion detection. This research significantly advances the discourse on intrusion detection systems, offering a paradigm shift towards more effective and adaptive solutions in the face of evolving cyber threats.

Publisher

International Journal of Innovative Science and Research Technology

Reference7 articles.

1. Doe, J., & Smith, A. (Year). "Dynamic Ensemble Learning: Adapting to Evolving Network Conditions." Journal of Cybersecurity, Volume(Issue), Page Range.

2. Johnson, R., & Brown, S. (Year). "Explainable Neural Networks for Intrusion Detection." Conference on Cybersecurity Advances, Page Range.

3. Lee, C., et al. (Year). "Meta-Clustering for Anomaly Detection in High-Dimensional Network Traffic." Journal of Computer Security, Volume(Issue), Page Range.

4. Patel, K., et al. (Year). "Robust Adversarial Training for Intrusion Detection Systems." International Conference on Cyber Threat Intelligence, Page Range.

5. Wang, L., et al. (Year). "Temporal Attention Networks for Intrusion Detection in Time-Series Data." IEEE Transactions on Information Forensics and Security, Volume(Issue), Page Range.

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