Researcher Collab

Adaptive machine learning system for cybersecurity threats

Journal of Discrete Mathematical Sciences and Cryptography

With the proliferation of digital technologies, cybercrime has become a pervasive system where end users, government users and business industries worldwide. Addressing this complex challenge requires innovative approaches that leverage different technologies like machine learning and data science. This abstract presents a machine learning-based computational system designed to combat cybercrime offenses effectively. The proposed system integrates machine learning algorithms with computational systems that find a lot of information and its similar patterns which are the ways of cybercrimes. By leveraging supervised, unsupervised, and reinforcement learning methods, the system can detect anomalies, classify malicious behavior, and predict potential cyber threats in real-time. Cybercrime has become a significant concern in the modern system where most of the users are using digital devices which causes the identity theft to financial fraud. Traditional methods of combating cybercrime are often reactive and fall short in finding the rapidly evolving system of cyber threats. In response, there is a growing interest in developing proactive and intelligent systems to detect, prevent, and mitigate cybercrime offenses. This paper presents a machine learning-based computational system for controlling cybercrime offenses. By seeing the information in the data set it starts learning itself and adapting to emerging threats, the system can effectively detect and reaction on the cyber threats active in the real environment.

Authors: Preeti Narooka, Suchita Arora, Satyajee Srivastava, Mohit Tiwari, S. K. Yadav

DOI: https://doi.org/10.47974/jdmsc-2161

Publish Year: 2025