Enhancing Threat Detection in Cybersecurity with Machine Learning: Real-Time Analysis for Improved Network Defense
Abstract
As cyber threats evolve, traditional security systems struggle to detect sophisticated attacks in real time. This paper presents a machine learning-based threat detection model that analyzes network traffic patterns to identify anomalies indicative of potential cyberattacks. By utilizing supervised and unsupervised learning algorithms, the model continuously improves its detection capabilities, adapting to new threats as they emerge. Case studies demonstrate the model’s accuracy in detecting zero-day exploits and malicious behaviors, showcasing the role of machine learning in fortifying network defenses and reducing response times in cybersecurity.
Downloads
References
Deekshith, A. (2020). AI-Enhanced Data Science: Techniques for Improved Data Visualization and Interpretation. International Journal of Creative Research In Computer Technology and Design, 2(2).
Deekshith, A. (2019). Integrating AI and Data Engineering: Building Robust Pipelines for Real-Time Data Analytics. International Journal of Sustainable Development in Computing Science, 1(3), 1-35.
Boppiniti, S. T. (2022). Exploring the Synergy of AI, ML, and Data Analytics in Enhancing Customer Experience and Personalization. International Machine learning journal and Computer Engineering, 5(5).
Deekshith, A. (2021). Data Engineering for AI: Optimizing Data Quality and Accessibility for Machine Learning Models. International Journal of Management Education for Sustainable Development, 4(4), 1-33.
Balantrapu, S. S. (2022). Evaluating AI-Enhanced Cybersecurity Solutions Versus Traditional Methods: A Comparative Study. International Journal of Sustainable Development Through AI, ML and IoT, 1(1), 1-15.
Balantrapu, S. S. (2022). Ethical Considerations in AI-Powered Cybersecurity. International Machine learning journal and Computer Engineering, 5(5).
Balantrapu, S. S. (2021). The Impact of Machine Learning on Incident Response Strategies. International Journal of Management Education for Sustainable Development, 4(4), 1-17.
Balantrapu, S. S. (2019). Adversarial Machine Learning: Security Threats and Mitigations. International Journal of Sustainable Development in Computing Science, 1(3), 1-18.
Pillai, S. E. V. S., Polimetla, K., Avacharmal, R., & Perumal, A. P. (2022). Mental health in the tech industry: Insights from surveys and NLP analysis. JOURNAL OF RECENT TRENDS IN COMPUTER SCIENCE AND ENGINEERING (JRTCSE), 10(2), 22-33.
Balantrapu, S. S. (2023). Evaluating the Effectiveness of Machine Learning in Phishing Detection. International Scientific Journal for Research, 5(5).
Balantrapu, S. S. (2023). Future Trends in AI and Machine Learning for Cybersecurity. International Journal of Creative Research In Computer Technology and Design, 5(5).