Machine Learning for Android Scareware Detection

被引:3
作者
Bagui, Sikha [1 ]
Brock, Hunter [2 ]
机构
[1] Univ West Florida, Dept Comp Sci, Pensacola, FL 32514 USA
[2] Univ West Florida, Comp Sci, Pensacola, FL USA
关键词
Android Malware; Decision Tree Classification; Information Gain; Intrusion Detection Systems; Malware Detection; Scareware;
D O I
10.4018/JITR.298326
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
With the steady rise in the use of smartphones, specifically Android smartphones, there is an ongoing need to build strong intrusion detection systems to protect ourselves from malicious software attacks. This work focuses on a sub-group of android malware, scareware. The novelty of this work lies in being able to detect the various scareware families individually using a small number of network attributes, determined by a recursive feature elimination process based on information gain. No work has yet been done on analyzing the scareware families individually. Results of this work show that the number of bytes initially sent back and forth, packet size, amount of time between flows and flow duration are the most important attributes that would be needed to classify a scareware attack. Three classifiers, Decision Tree, Naive Bayes, and OneR, were used for classification. The highest average classification accuracy (79.5%) was achieved by the Decision Tree classifier with a minimum of 44 attributes.
引用
收藏
页数:15
相关论文
共 50 条
[21]   Android malware detection through machine learning on kernel task structures [J].
Wang, Xinning ;
Li, Chong .
NEUROCOMPUTING, 2021, 435 :126-150
[22]   Efficient and Effective Static Android Malware Detection Using Machine Learning [J].
Bansal, Vidhi ;
Ghosh, Mohona ;
Baliyan, Niyati .
INFORMATION SYSTEMS SECURITY, ICISS 2022, 2022, 13784 :103-118
[23]   Preliminary Results of Applying Machine Learning Algorithms to Android Malware Detection [J].
Leeds, Matthew ;
Atkison, Travis .
2016 INTERNATIONAL CONFERENCE ON COMPUTATIONAL SCIENCE & COMPUTATIONAL INTELLIGENCE (CSCI), 2016, :1070-1073
[24]   Android Malware Detection Using Hybrid Analysis and Machine Learning Technique [J].
Yang, Fan ;
Zhuang, Yi ;
Wang, Jun .
CLOUD COMPUTING AND SECURITY, PT II, 2017, 10603 :565-575
[25]   Malware Detection in Android Mobile Platform using Machine Learning Algorithms [J].
Al Ali, Mariam ;
Svetinovic, Davor ;
Aung, Zeyar ;
Lukman, Suryani .
2017 INTERNATIONAL CONFERENCE ON INFOCOM TECHNOLOGIES AND UNMANNED SYSTEMS (TRENDS AND FUTURE DIRECTIONS) (ICTUS), 2017, :763-768
[26]   Android malware detection applying feature selection techniques and machine learning [J].
Mohammad Reza Keyvanpour ;
Mehrnoush Barani Shirzad ;
Farideh Heydarian .
Multimedia Tools and Applications, 2023, 82 :9517-9531
[27]   Malware Detection in Android Systems with Traditional Machine Learning Models: A Survey [J].
Bayazit, Esra Calik ;
Sahingoz, Ozgur Koray ;
Dogan, Buket .
2ND INTERNATIONAL CONGRESS ON HUMAN-COMPUTER INTERACTION, OPTIMIZATION AND ROBOTIC APPLICATIONS (HORA 2020), 2020, :374-381
[28]   Android Malware Detection based on Useful API Calls and Machine Learning [J].
Jung, Jaemin ;
Kim, Hyunjin ;
Shin, Dongjin ;
Lee, Myeonggeon ;
Lee, Hyunjae ;
Cho, Seong-je ;
Suh, Kyoungwon .
2018 IEEE FIRST INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND KNOWLEDGE ENGINEERING (AIKE), 2018, :175-178
[29]   Analysis of Android Malware Detection Performance using Machine Learning Classifiers [J].
Ham, Hyo-Sik ;
Choi, Mi-Jung .
2013 INTERNATIONAL CONFERENCE ON ICT CONVERGENCE (ICTC 2013): FUTURE CREATIVE CONVERGENCE TECHNOLOGIES FOR NEW ICT ECOSYSTEMS, 2013, :492-497
[30]   Android Mobile Malware Detection Using Machine Learning: A Systematic Review [J].
Senanayake, Janaka ;
Kalutarage, Harsha ;
Al-Kadri, Mhd Omar .
ELECTRONICS, 2021, 10 (13)