Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection

This paper outlines and proposes a new approach to cyber attack detection on the basis of the practical application of the efficient lifelong learning cybersecurity system. One of the main difficulties in machine learning is to build intelligent systems that are capable of learning sequential tasks...

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Bibliographic Details
Main Authors: Rafał Kozik, Michał Choraś, Jörg Keller
Format: Article
Language:English
Published: Graz University of Technology 2019-01-01
Series:Journal of Universal Computer Science
Subjects:
Online Access:https://lib.jucs.org/article/22573/download/pdf/
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spelling doaj-2ff1348aa3c84303a5a1c46e1cf3e6962021-06-23T07:57:22ZengGraz University of TechnologyJournal of Universal Computer Science0948-69682019-01-0125121510.3217/jucs-025-01-000222573Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack DetectionRafał Kozik0Michał Choraś1Jörg KellerTP University of Science and TechnologyUniversity of Science and TechnologyThis paper outlines and proposes a new approach to cyber attack detection on the basis of the practical application of the efficient lifelong learning cybersecurity system. One of the main difficulties in machine learning is to build intelligent systems that are capable of learning sequential tasks and then to transfer knowledge from a previously learnt foundation to learn new tasks. Such capability is termed as Lifelong Machine Learning (LML) or as Lifelong Learning Intelligent Systems (LLIS). This kind of solution would promptly address the current problems in the cybersecurity domain, where each new cyber attack can be considered as a new task. Our approach is an extension of the Efficient Lifelong Learning (ELLA) framework. Hereby, we propose the new B-ELLA (Balanced ELLA) framework to detect cyber attacks and to counter the problem of network data imbalance. Our proposition is evaluated on a malware benchmark dataset and we achieve promising results.https://lib.jucs.org/article/22573/download/pdf/lifelong machine learningclassifficationdata i
collection DOAJ
language English
format Article
sources DOAJ
author Rafał Kozik
Michał Choraś
Jörg Keller
spellingShingle Rafał Kozik
Michał Choraś
Jörg Keller
Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection
Journal of Universal Computer Science
lifelong machine learning
classiffication
data i
author_facet Rafał Kozik
Michał Choraś
Jörg Keller
author_sort Rafał Kozik
title Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection
title_short Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection
title_full Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection
title_fullStr Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection
title_full_unstemmed Balanced Efficient Lifelong Learning (B-ELLA) for Cyber Attack Detection
title_sort balanced efficient lifelong learning (b-ella) for cyber attack detection
publisher Graz University of Technology
series Journal of Universal Computer Science
issn 0948-6968
publishDate 2019-01-01
description This paper outlines and proposes a new approach to cyber attack detection on the basis of the practical application of the efficient lifelong learning cybersecurity system. One of the main difficulties in machine learning is to build intelligent systems that are capable of learning sequential tasks and then to transfer knowledge from a previously learnt foundation to learn new tasks. Such capability is termed as Lifelong Machine Learning (LML) or as Lifelong Learning Intelligent Systems (LLIS). This kind of solution would promptly address the current problems in the cybersecurity domain, where each new cyber attack can be considered as a new task. Our approach is an extension of the Efficient Lifelong Learning (ELLA) framework. Hereby, we propose the new B-ELLA (Balanced ELLA) framework to detect cyber attacks and to counter the problem of network data imbalance. Our proposition is evaluated on a malware benchmark dataset and we achieve promising results.
topic lifelong machine learning
classiffication
data i
url https://lib.jucs.org/article/22573/download/pdf/
work_keys_str_mv AT rafałkozik balancedefficientlifelonglearningbellaforcyberattackdetection
AT michałchoras balancedefficientlifelonglearningbellaforcyberattackdetection
AT jorgkeller balancedefficientlifelonglearningbellaforcyberattackdetection
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