Mobile botnet detection model based on retrospective pattern recognition
The dynamic nature of Botnets along with their sophisticated characteristics makes them one of the biggest threats to cyber security. Recently, the HTTP protocol is widely used by Botmaster as they can easily hide their command and control traffic amongst the benign web traffic. This paper proposes...
Published in: | International Journal of Security and its Applications |
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Science and Engineering Research Support Society
2016
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2-s2.0-84992073868 Eslahi M.; Yousefi M.; Naseri M.V.; Yussof Y.M.; Tahir N.M.; Hashim H. Mobile botnet detection model based on retrospective pattern recognition 2016 International Journal of Security and its Applications 10 9 10.14257/ijsia.2016.10.9.05 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84992073868&doi=10.14257%2fijsia.2016.10.9.05&partnerID=40&md5=a3af90bfdfc2888cac26e2fc943f9c03 The dynamic nature of Botnets along with their sophisticated characteristics makes them one of the biggest threats to cyber security. Recently, the HTTP protocol is widely used by Botmaster as they can easily hide their command and control traffic amongst the benign web traffic. This paper proposes a Neural Network based model to detect mobile HTTP Botnets with random intervals independent of the packet payload, commands content, and encryption complexity of Bot communications. The experimental test results that were conducted on existing datasets and real world Bot samples show that the proposed method is able to detect mobile HTTP Botnets with high accuracy. © 2016 SERSC. Science and Engineering Research Support Society 17389976 English Article All Open Access; Bronze Open Access |
author |
Eslahi M.; Yousefi M.; Naseri M.V.; Yussof Y.M.; Tahir N.M.; Hashim H. |
spellingShingle |
Eslahi M.; Yousefi M.; Naseri M.V.; Yussof Y.M.; Tahir N.M.; Hashim H. Mobile botnet detection model based on retrospective pattern recognition |
author_facet |
Eslahi M.; Yousefi M.; Naseri M.V.; Yussof Y.M.; Tahir N.M.; Hashim H. |
author_sort |
Eslahi M.; Yousefi M.; Naseri M.V.; Yussof Y.M.; Tahir N.M.; Hashim H. |
title |
Mobile botnet detection model based on retrospective pattern recognition |
title_short |
Mobile botnet detection model based on retrospective pattern recognition |
title_full |
Mobile botnet detection model based on retrospective pattern recognition |
title_fullStr |
Mobile botnet detection model based on retrospective pattern recognition |
title_full_unstemmed |
Mobile botnet detection model based on retrospective pattern recognition |
title_sort |
Mobile botnet detection model based on retrospective pattern recognition |
publishDate |
2016 |
container_title |
International Journal of Security and its Applications |
container_volume |
10 |
container_issue |
9 |
doi_str_mv |
10.14257/ijsia.2016.10.9.05 |
url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-84992073868&doi=10.14257%2fijsia.2016.10.9.05&partnerID=40&md5=a3af90bfdfc2888cac26e2fc943f9c03 |
description |
The dynamic nature of Botnets along with their sophisticated characteristics makes them one of the biggest threats to cyber security. Recently, the HTTP protocol is widely used by Botmaster as they can easily hide their command and control traffic amongst the benign web traffic. This paper proposes a Neural Network based model to detect mobile HTTP Botnets with random intervals independent of the packet payload, commands content, and encryption complexity of Bot communications. The experimental test results that were conducted on existing datasets and real world Bot samples show that the proposed method is able to detect mobile HTTP Botnets with high accuracy. © 2016 SERSC. |
publisher |
Science and Engineering Research Support Society |
issn |
17389976 |
language |
English |
format |
Article |
accesstype |
All Open Access; Bronze Open Access |
record_format |
scopus |
collection |
Scopus |
_version_ |
1812871801866289152 |