Recent Advancements in Machine Learning for Cybercrime Prediction
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Lavanya Elluri, Varun Mandalapu, Piyush Vyas & Nirmalya Roy (2023), Recent Advancements in Machine Learning for Cybercrime Prediction, Journal of Computer Information Systems, DOI: 10.1080/08874417.2023.2270457
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This is an Accepted Manuscript of an article published by Taylor & Francis in Journal of Computer Information Systems on 24 Oct 2023, available online: http://www.tandfonline.com/10.1080/08874417.2023.2270457.
Access to this item will begin on 10-24-2024.
Access to this item will begin on 10-24-2024.
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Abstract
Cybercrime is a growing threat to organizations and individuals worldwide, with criminals using sophisticated techniques to breach security systems and steal sensitive data. This paper aims to comprehensively survey the latest advancements in cybercrime prediction, highlighting the relevant research. For this purpose, we reviewed more than 150 research articles and discussed 50 most recent and appropriate ones. We start the review with some standard methods cybercriminals use and then focus on the latest machine and deep learning techniques, which detect anomalous behavior and identify potential threats. We also discuss transfer learning, which allows models trained on one dataset to be adapted for use on another dataset. We then focus on active and reinforcement learning as part of early-stage algorithmic research in cybercrime prediction. Finally, we discuss critical innovations, research gaps, and future research opportunities in Cybercrime prediction. This paper presents a holistic view of cutting-edge developments and publicly available datasets.
