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Volume 2 - Issue 2, March - April 2026

πŸ“‘ Paper Information
πŸ“‘ Paper Title A State of The Art Review of Machine Learning Approches for Cyber Security
πŸ‘€ Authors Dr.A.Vinoth, Ms.M.Vijaya Sri
πŸ“˜ Published Issue Volume 2 Issue 2
πŸ“… Year of Publication 2026
πŸ†” Unique Identification Number IJAMRED-V2I2P17
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πŸ“ Abstract
Cybercrime is growing rapidly and takes advantage of weaknesses in today’s computing systems. Ethical hackers play an important role in identifying these weaknesses and proposing effective methods to reduce security risks. As cyber threats continue to evolve, the cybersecurity community faces an urgent need for advanced and reliable protection techniques.
In recent years, machine learning has become increasingly important in cybersecurity because of its ability to analyze large amounts of data and identify complex attack patterns. Machine learning approaches are commonly applied to key security tasks such as intrusion detection, malware detection and classification, spam filtering, and phishing detection.
While machine learning alone cannot fully automate cybersecurity operations, it significantly improves the efficiency and accuracy of threat detection compared to traditional rule-based methods, thereby reducing the workload of security professionals.
The constantly changing nature of cyber threats presents ongoing challenges for researchers, requiring a strong combination of expertise in both cybersecurity and data science. This paper reviews recent machine learning-based cybersecurity solutions and examines the effectiveness of various algorithms in addressing common cyber threats.
πŸ“ How to Cite
Dr.A.Vinoth, Ms.M.Vijaya Sri, "A State of The Art Review of Machine Learning Approches for Cyber Security" International Journal of Advanced Multidisciplinary Research and Educational Development, V2(2): Page(106-112) Mar-Apr 2026. ISSN: 3107-6513. www.ijamred.com. Published by Scientific and Academic Research Publishing.
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