Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach

Cyber breaches are costly for the global economy and extensive efforts have gone into improving the cybersecurity infrastructure. There are numerous types of cyber breaches that vary greatly in terms of cause and impact, resulting in an extensive literature for individual cyber breach type. Our pape...

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Main Authors: Goh, Jing Rong, Wang, Shaun S., Harel, Yaniv, Toh, Gabriel
Other Authors: Nanyang Business School
Format: Article
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/173567
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1735672024-02-15T15:35:57Z Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach Goh, Jing Rong Wang, Shaun S. Harel, Yaniv Toh, Gabriel Nanyang Business School Computer and Information Science Predicting outcomes Predictive analytics Cyber breaches are costly for the global economy and extensive efforts have gone into improving the cybersecurity infrastructure. There are numerous types of cyber breaches that vary greatly in terms of cause and impact, resulting in an extensive literature for individual cyber breach type. Our paper seeks to provide a general framework that can be easily applied to analyze different types of cyber breaches. Our framework is inspired by the taxonomy approach in the cybersecurity literature, where it was proposed that an effective set of taxonomy can provide a direction on supporting improved decision-making in cyber risk management and selecting relevant cybersecurity controls. Our paper extends upon the current approach by using this taxonomy to model and predict the associated breach outcomes, given the occurrence of a cyber breach. Specifically, our paper applies least absolute shrinkage and selection operator (LASSO) within a taxonomy framework. Using a proprietary database of known cyber breaches, we show that this analytical tool performs well in out-of-sample predictions and a stable model that generates consistent predictions. For each cyber breach outcome type, we also provide the list of keywords that are useful in predicting the outcome type. We envision researchers, insurers, underwriters, and cybersecurity professionals can use (or expand on) our list of keywords, or use our method to yield their own set of keywords. Practitioners who seek to mitigate their cyber risk may use these keywords as a guide towards the specific attack surfaces that might be most susceptible to the corresponding breach. Our paper lays the groundwork for researchers to better apply the taxonomy approach within cybersecurity research. We also perform regression analysis to identify industries that are most susceptible to various cyber breach events. Our results corroborate with the literature, where some industries are indeed more likely to be impacted by certain types of cyberattacks. Monetary Authority of Singapore Nanyang Technological University National Research Foundation (NRF) Published version The research work was supported by two research programmes: (1) the Cyber Risk Management (CyRiM) programme, a public-private partnership between the Nanyang Technological University, the Monetary Authority of Singapore, the Cyber Security Agency of Singapore, Aon, Lloyd’s, MSIG, SCOR and TransRe; and (2) The Quantification of Cyber Risk programme, jointly awarded by the National Research Foundation of Singapore and Tel Aviv University of Israel. 2024-02-14T05:20:17Z 2024-02-14T05:20:17Z 2023 Journal Article Goh, J. R., Wang, S. S., Harel, Y. & Toh, G. (2023). Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach. Journal of Cybersecurity, 9(1), 1-15. https://dx.doi.org/10.1093/cybsec/tyad015 2057-2085 https://hdl.handle.net/10356/173567 10.1093/cybsec/tyad015 2-s2.0-85168763652 1 9 1 15 en Journal of Cybersecurity © The Author(s) 2023. Published by Oxford University Press. This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Computer and Information Science
Predicting outcomes
Predictive analytics
spellingShingle Computer and Information Science
Predicting outcomes
Predictive analytics
Goh, Jing Rong
Wang, Shaun S.
Harel, Yaniv
Toh, Gabriel
Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach
description Cyber breaches are costly for the global economy and extensive efforts have gone into improving the cybersecurity infrastructure. There are numerous types of cyber breaches that vary greatly in terms of cause and impact, resulting in an extensive literature for individual cyber breach type. Our paper seeks to provide a general framework that can be easily applied to analyze different types of cyber breaches. Our framework is inspired by the taxonomy approach in the cybersecurity literature, where it was proposed that an effective set of taxonomy can provide a direction on supporting improved decision-making in cyber risk management and selecting relevant cybersecurity controls. Our paper extends upon the current approach by using this taxonomy to model and predict the associated breach outcomes, given the occurrence of a cyber breach. Specifically, our paper applies least absolute shrinkage and selection operator (LASSO) within a taxonomy framework. Using a proprietary database of known cyber breaches, we show that this analytical tool performs well in out-of-sample predictions and a stable model that generates consistent predictions. For each cyber breach outcome type, we also provide the list of keywords that are useful in predicting the outcome type. We envision researchers, insurers, underwriters, and cybersecurity professionals can use (or expand on) our list of keywords, or use our method to yield their own set of keywords. Practitioners who seek to mitigate their cyber risk may use these keywords as a guide towards the specific attack surfaces that might be most susceptible to the corresponding breach. Our paper lays the groundwork for researchers to better apply the taxonomy approach within cybersecurity research. We also perform regression analysis to identify industries that are most susceptible to various cyber breach events. Our results corroborate with the literature, where some industries are indeed more likely to be impacted by certain types of cyberattacks.
author2 Nanyang Business School
author_facet Nanyang Business School
Goh, Jing Rong
Wang, Shaun S.
Harel, Yaniv
Toh, Gabriel
format Article
author Goh, Jing Rong
Wang, Shaun S.
Harel, Yaniv
Toh, Gabriel
author_sort Goh, Jing Rong
title Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach
title_short Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach
title_full Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach
title_fullStr Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach
title_full_unstemmed Predictive taxonomy analytics (LASSO): predicting outcome types of cyber breach
title_sort predictive taxonomy analytics (lasso): predicting outcome types of cyber breach
publishDate 2024
url https://hdl.handle.net/10356/173567
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