DocumentCode
37405
Title
Smartphone malware detection model based on artificial immune system
Author
Wu Bin ; Lu Tianliang ; Zheng Kangfeng ; Zhang Dongmei ; Lin Xing
Author_Institution
Inf. Security Lab., Beijing Univ. of Posts & Telecommun., Beijing, China
Volume
11
Issue
13
fYear
2014
fDate
Supplement 2014
Firstpage
86
Lastpage
92
Abstract
In order to solve the problem that the traditional signature-based detection technology cannot effectively detect unknown malware, we propose in this study a smartphone malware detection model (SP-MDM) based on artificial immune system, in which static malware analysis and dynamic malware analysis techniques are combined, and antigens are generated by encoding the characteristics extracted from the malware. Based on negative selection algorithm, the mature detectors are generated. By introducing clonal selection algorithm, the detectors with higher affinity are selected to undergo a proliferation and somatic hyper-mutation process, so that more excellent detector offspring can be generated. Experimental result shows that the detection model has a higher detection rate for unknown smartphone malware, and better detection performance can be achieved by increasing the clone generation.
Keywords
artificial immune systems; invasive software; mobile computing; smart phones; SP-MDM; artificial immune system; clonal selection algorithm; dynamic malware analysis; negative selection algorithm; smartphone malware detection model; somatic hyper-mutation process; static malware analysis; Cloning; Data mining; Detectors; Encoding; Feature extraction; Immune system; Malware; artificial immune system; clonal selection; detection; negative selection; smartphone malware;
fLanguage
English
Journal_Title
Communications, China
Publisher
ieee
ISSN
1673-5447
Type
jour
DOI
10.1109/CC.2014.7022530
Filename
7022530
Link To Document