Smart Approach for Botnet Detection Based on Network Traffic Analysis

Today, botnets are the most common threat on the Internet and are used as the main attack vector against individuals and businesses. Cybercriminals have exploited botnets for many illegal activities, including click fraud, DDOS attacks, and spam production. In this article, we suggest a method for i...

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Main Authors: Alaa Obeidat, Rola Yaqbeh
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Electrical and Computer Engineering
Online Access:http://dx.doi.org/10.1155/2022/3073932
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author Alaa Obeidat
Rola Yaqbeh
author_facet Alaa Obeidat
Rola Yaqbeh
author_sort Alaa Obeidat
collection DOAJ
description Today, botnets are the most common threat on the Internet and are used as the main attack vector against individuals and businesses. Cybercriminals have exploited botnets for many illegal activities, including click fraud, DDOS attacks, and spam production. In this article, we suggest a method for identifying the behavior of data traffic using machine learning classifiers including genetic algorithm to detect botnet activities. By categorizing behavior based on time slots, we investigate the viability of detecting botnet behavior without seeing a whole network data flow. We also evaluate the efficacy of two well-known classification methods with reference to this data. We demonstrate experimentally, using existing datasets, that it is possible to detect botnet activities with high precision.
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institution Kabale University
issn 2090-0155
language English
publishDate 2022-01-01
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series Journal of Electrical and Computer Engineering
spelling doaj-art-03445c72515d475997ca960f5bc951712025-02-03T05:58:32ZengWileyJournal of Electrical and Computer Engineering2090-01552022-01-01202210.1155/2022/3073932Smart Approach for Botnet Detection Based on Network Traffic AnalysisAlaa Obeidat0Rola Yaqbeh1Basic Sciences DepartmentNursing FacultyToday, botnets are the most common threat on the Internet and are used as the main attack vector against individuals and businesses. Cybercriminals have exploited botnets for many illegal activities, including click fraud, DDOS attacks, and spam production. In this article, we suggest a method for identifying the behavior of data traffic using machine learning classifiers including genetic algorithm to detect botnet activities. By categorizing behavior based on time slots, we investigate the viability of detecting botnet behavior without seeing a whole network data flow. We also evaluate the efficacy of two well-known classification methods with reference to this data. We demonstrate experimentally, using existing datasets, that it is possible to detect botnet activities with high precision.http://dx.doi.org/10.1155/2022/3073932
spellingShingle Alaa Obeidat
Rola Yaqbeh
Smart Approach for Botnet Detection Based on Network Traffic Analysis
Journal of Electrical and Computer Engineering
title Smart Approach for Botnet Detection Based on Network Traffic Analysis
title_full Smart Approach for Botnet Detection Based on Network Traffic Analysis
title_fullStr Smart Approach for Botnet Detection Based on Network Traffic Analysis
title_full_unstemmed Smart Approach for Botnet Detection Based on Network Traffic Analysis
title_short Smart Approach for Botnet Detection Based on Network Traffic Analysis
title_sort smart approach for botnet detection based on network traffic analysis
url http://dx.doi.org/10.1155/2022/3073932
work_keys_str_mv AT alaaobeidat smartapproachforbotnetdetectionbasedonnetworktrafficanalysis
AT rolayaqbeh smartapproachforbotnetdetectionbasedonnetworktrafficanalysis