Cybersecurity data science: an overview from machine learning perspective
Abstract In a computing context, cybersecurity is undergoing massive shifts in technology and its operations in recent days, and data science is driving the change. Extracting security incident patterns or insights from cybersecurity data and building corresponding data-driven model, is the key to m...
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Online Access: | http://link.springer.com/article/10.1186/s40537-020-00318-5 |
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doaj-594d8789983344a388ff5ebdf776ba862020-11-25T04:09:19ZengSpringerOpenJournal of Big Data2196-11152020-07-017112910.1186/s40537-020-00318-5Cybersecurity data science: an overview from machine learning perspectiveIqbal H. Sarker0A. S. M. Kayes1Shahriar Badsha2Hamed Alqahtani3Paul Watters4Alex Ng5Swinburne University of TechnologyLa Trobe UniversityUniversity of NevadaMacquarie UniversityLa Trobe UniversityLa Trobe UniversityAbstract In a computing context, cybersecurity is undergoing massive shifts in technology and its operations in recent days, and data science is driving the change. Extracting security incident patterns or insights from cybersecurity data and building corresponding data-driven model, is the key to make a security system automated and intelligent. To understand and analyze the actual phenomena with data, various scientific methods, machine learning techniques, processes, and systems are used, which is commonly known as data science. In this paper, we focus and briefly discuss on cybersecurity data science, where the data is being gathered from relevant cybersecurity sources, and the analytics complement the latest data-driven patterns for providing more effective security solutions. The concept of cybersecurity data science allows making the computing process more actionable and intelligent as compared to traditional ones in the domain of cybersecurity. We then discuss and summarize a number of associated research issues and future directions. Furthermore, we provide a machine learning based multi-layered framework for the purpose of cybersecurity modeling. Overall, our goal is not only to discuss cybersecurity data science and relevant methods but also to focus the applicability towards data-driven intelligent decision making for protecting the systems from cyber-attacks.http://link.springer.com/article/10.1186/s40537-020-00318-5CybersecurityMachine learningData scienceDecision makingCyber-attackSecurity modeling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Iqbal H. Sarker A. S. M. Kayes Shahriar Badsha Hamed Alqahtani Paul Watters Alex Ng |
spellingShingle |
Iqbal H. Sarker A. S. M. Kayes Shahriar Badsha Hamed Alqahtani Paul Watters Alex Ng Cybersecurity data science: an overview from machine learning perspective Journal of Big Data Cybersecurity Machine learning Data science Decision making Cyber-attack Security modeling |
author_facet |
Iqbal H. Sarker A. S. M. Kayes Shahriar Badsha Hamed Alqahtani Paul Watters Alex Ng |
author_sort |
Iqbal H. Sarker |
title |
Cybersecurity data science: an overview from machine learning perspective |
title_short |
Cybersecurity data science: an overview from machine learning perspective |
title_full |
Cybersecurity data science: an overview from machine learning perspective |
title_fullStr |
Cybersecurity data science: an overview from machine learning perspective |
title_full_unstemmed |
Cybersecurity data science: an overview from machine learning perspective |
title_sort |
cybersecurity data science: an overview from machine learning perspective |
publisher |
SpringerOpen |
series |
Journal of Big Data |
issn |
2196-1115 |
publishDate |
2020-07-01 |
description |
Abstract In a computing context, cybersecurity is undergoing massive shifts in technology and its operations in recent days, and data science is driving the change. Extracting security incident patterns or insights from cybersecurity data and building corresponding data-driven model, is the key to make a security system automated and intelligent. To understand and analyze the actual phenomena with data, various scientific methods, machine learning techniques, processes, and systems are used, which is commonly known as data science. In this paper, we focus and briefly discuss on cybersecurity data science, where the data is being gathered from relevant cybersecurity sources, and the analytics complement the latest data-driven patterns for providing more effective security solutions. The concept of cybersecurity data science allows making the computing process more actionable and intelligent as compared to traditional ones in the domain of cybersecurity. We then discuss and summarize a number of associated research issues and future directions. Furthermore, we provide a machine learning based multi-layered framework for the purpose of cybersecurity modeling. Overall, our goal is not only to discuss cybersecurity data science and relevant methods but also to focus the applicability towards data-driven intelligent decision making for protecting the systems from cyber-attacks. |
topic |
Cybersecurity Machine learning Data science Decision making Cyber-attack Security modeling |
url |
http://link.springer.com/article/10.1186/s40537-020-00318-5 |
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