Bayesian Models Applied to Cyber Security Anomaly Detection Problems

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2022-04-01

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Abstract

Cyber security is an important concern for all individuals, organisations and governments globally. Cyber attacks have become more sophisticated, frequent and dangerous than ever, and traditional anomaly detection methods have been proved to be less effective when dealing with these new classes of cyber threats. In order to address this, both classical and Bayesian models offer a valid and innovative alternative to the traditional signature-based methods, motivating the increasing interest in statistical research that it has been observed in recent years. In this review, we provide a description of some typical cyber security challenges, typical types of data and statistical methods, paying special attention to Bayesian approaches for these problems.

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anomaly detection, Bayesian statistics, computer networks, cyber security

Citation

Published Version (Please cite this version)

10.1111/insr.12466

Publication Info

Perusquía, JA, JE Griffin and C Villa (2022). Bayesian Models Applied to Cyber Security Anomaly Detection Problems. International Statistical Review, 90(1). pp. 78–99. 10.1111/insr.12466 Retrieved from https://hdl.handle.net/10161/33552.

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Scholars@Duke

Villa

Cristiano Villa

Associate Professor of Statistics at Duke Kunshan University

Prof. Cristiano Villa main research area is in Bayesian statistics, with particular interest in objective methods. His output has been published in several peer-reviewed journals and presented at international conferences, such as the ISBA International Conference, the O-Bayes conference, and the ERCIM conference. In addition to his research, Prof. Villa is deeply committed to teaching and enjoys interacting with students. His teaching interests include probability, statistics, linear modelling, and risk management. Before joining Duke Kunshan University (DKU), Prof. Villa was a member of the Newcastle University (UK) and the University of Kent (UK). Prior to joining academia in 2014, he worked as an auditor and as an advisor for KPMG in several countries, including, Italy, UK, New Zealand, and Singapore. He holds an M.Sc. and a Ph.D. from the University of Kent, UK.


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