Designing a new model for Trojan horse detection using sequential minimal optimization
Malwares attack such as by the worm, virus, trojan horse and botnet have caused lots of troublesome for many organisations and users which lead to the cybercrime. Living in a cyber world, being infected by these malwares becoming more common. Nowadays the malwares attack especially by the trojan hor...
Saved in:
Main Authors: | , , , |
---|---|
Format: | Conference Paper |
Language: | en_US |
Published: |
Springer Verlag
2015
|
Subjects: | |
Online Access: | http://ddms.usim.edu.my/handle/123456789/9177 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Universiti Sains Islam Malaysia |
Language: | en_US |
id |
my.usim-9177 |
---|---|
record_format |
dspace |
spelling |
my.usim-91772015-08-25T03:04:07Z Designing a new model for Trojan horse detection using sequential minimal optimization M.M., Saudi A.M., Abuzaid B.M., Taib Z.H., Abdullah Artificial intelligence; Learning algorithms Learning systems; Optimization; Error detection; Automated analysis False positive rates; Sequential minimal optimization Sequential minimal optimization algorithms; Trojan detections; Trojan Horse attacks; Trojan horse detection; True positive rates; Malwares; Trojan horse; Malware Malwares attack such as by the worm, virus, trojan horse and botnet have caused lots of troublesome for many organisations and users which lead to the cybercrime. Living in a cyber world, being infected by these malwares becoming more common. Nowadays the malwares attack especially by the trojan horse is becoming more sophisticated and intelligent, makes it is harder to be detected than before. Therefore, in this research paper, a new model called Efficient Trojan Detection Model (ETDMo) is built to detect trojan horse attacks more efficiently. In this model, the static, dynamic and automated analyses were conducted and the machine learning algorithms were applied to optimize the performance. Based on the experiment conducted, the Sequential Minimal Optimization (SMO) algorithm has outperformed other machine learning algorithms with 98.2 % of true positive rate and with 1.7 % of false positive rate. 2015-08-25T03:04:07Z 2015-08-25T03:04:07Z 2015-01-01 Conference Paper 9783-3190-7673-7 1876-1100 http://ddms.usim.edu.my/handle/123456789/9177 en_US Springer Verlag |
institution |
Universiti Sains Islam Malaysia |
building |
USIM Library |
collection |
Institutional Repository |
continent |
Asia |
country |
Malaysia |
content_provider |
Universit Sains Islam i Malaysia |
content_source |
USIM Institutional Repository |
url_provider |
http://ddms.usim.edu.my/ |
language |
en_US |
topic |
Artificial intelligence; Learning algorithms Learning systems; Optimization; Error detection; Automated analysis False positive rates; Sequential minimal optimization Sequential minimal optimization algorithms; Trojan detections; Trojan Horse attacks; Trojan horse detection; True positive rates; Malwares; Trojan horse; Malware |
spellingShingle |
Artificial intelligence; Learning algorithms Learning systems; Optimization; Error detection; Automated analysis False positive rates; Sequential minimal optimization Sequential minimal optimization algorithms; Trojan detections; Trojan Horse attacks; Trojan horse detection; True positive rates; Malwares; Trojan horse; Malware M.M., Saudi A.M., Abuzaid B.M., Taib Z.H., Abdullah Designing a new model for Trojan horse detection using sequential minimal optimization |
description |
Malwares attack such as by the worm, virus, trojan horse and botnet have caused lots of troublesome for many organisations and users which lead to the cybercrime. Living in a cyber world, being infected by these malwares becoming more common. Nowadays the malwares attack especially by the trojan horse is becoming more sophisticated and intelligent, makes it is harder to be detected than before. Therefore, in this research paper, a new model called Efficient Trojan Detection Model (ETDMo) is built to detect trojan horse attacks more efficiently. In this model, the static, dynamic and automated analyses were conducted and the machine learning algorithms were applied to optimize the performance. Based on the experiment conducted, the Sequential Minimal Optimization (SMO) algorithm has outperformed other machine learning algorithms with 98.2 % of true positive rate and with 1.7 % of false positive rate. |
format |
Conference Paper |
author |
M.M., Saudi A.M., Abuzaid B.M., Taib Z.H., Abdullah |
author_facet |
M.M., Saudi A.M., Abuzaid B.M., Taib Z.H., Abdullah |
author_sort |
M.M., Saudi |
title |
Designing a new model for Trojan horse detection using sequential minimal optimization |
title_short |
Designing a new model for Trojan horse detection using sequential minimal optimization |
title_full |
Designing a new model for Trojan horse detection using sequential minimal optimization |
title_fullStr |
Designing a new model for Trojan horse detection using sequential minimal optimization |
title_full_unstemmed |
Designing a new model for Trojan horse detection using sequential minimal optimization |
title_sort |
designing a new model for trojan horse detection using sequential minimal optimization |
publisher |
Springer Verlag |
publishDate |
2015 |
url |
http://ddms.usim.edu.my/handle/123456789/9177 |
_version_ |
1645152557041975296 |