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Android Malware Detection using Mach...
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Debbabi, Mourad.
Android Malware Detection using Machine Learning = Data-Driven Fingerprinting and Threat Intelligence /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Android Malware Detection using Machine Learning/ by ElMouatez Billah Karbab, Mourad Debbabi, Abdelouahid Derhab, Djedjiga Mouheb.
其他題名:
Data-Driven Fingerprinting and Threat Intelligence /
作者:
Karbab, ElMouatez Billah.
其他作者:
Debbabi, Mourad.
面頁冊數:
XIV, 202 p. 81 illus., 64 illus. in color.online resource. :
Contained By:
Springer Nature eBook
標題:
Computer networks - Security measures. -
電子資源:
https://doi.org/10.1007/978-3-030-74664-3
ISBN:
9783030746643
Android Malware Detection using Machine Learning = Data-Driven Fingerprinting and Threat Intelligence /
Karbab, ElMouatez Billah.
Android Malware Detection using Machine Learning
Data-Driven Fingerprinting and Threat Intelligence /[electronic resource] :by ElMouatez Billah Karbab, Mourad Debbabi, Abdelouahid Derhab, Djedjiga Mouheb. - 1st ed. 2021. - XIV, 202 p. 81 illus., 64 illus. in color.online resource. - Advances in Information Security,861568-2633 ;. - Advances in Information Security,.
Introduction -- Background and Related Work -- Fingerprinting Android Malware Packages -- Robust Android Malicious Community Fingerprinting -- Android Malware Fingerprinting Using Dynamic Analysis -- Fingerprinting Cyber-Infrastructures of Android Malware -- Portable Supervised Malware Fingerprinting using Deep Learning -- Resilient and Adaptive Android Malware Fingerprinting and Detection -- Conclusion.
The authors develop a malware fingerprinting framework to cover accurate android malware detection and family attribution in this book. The authors emphasize the following: (1) the scalability over a large malware corpus; (2) the resiliency to common obfuscation techniques; (3) the portability over different platforms and architectures. First, the authors propose an approximate fingerprinting technique for android packaging that captures the underlying static structure of the android applications in the context of bulk and offline detection at the app-market level. This book proposes a malware clustering framework to perform malware clustering by building and partitioning the similarity network of malicious applications on top of this fingerprinting technique. Second, the authors propose an approximate fingerprinting technique that leverages dynamic analysis and natural language processing techniques to generate Android malware behavior reports. Based on this fingerprinting technique, the authors propose a portable malware detection framework employing machine learning classification. Third, the authors design an automatic framework to produce intelligence about the underlying malicious cyber-infrastructures of Android malware. The authors then leverage graph analysis techniques to generate relevant intelligence to identify the threat effects of malicious Internet activity associated with android malware. The authors elaborate on an effective android malware detection system, in the online detection context at the mobile device level. It is suitable for deployment on mobile devices, using machine learning classification on method call sequences. Also, it is resilient to common code obfuscation techniques and adaptive to operating systems and malware change overtime, using natural language processing and deep learning techniques. Researchers working in mobile and network security, machine learning and pattern recognition will find this book useful as a reference. Advanced-level students studying computer science within these topic areas will purchase this book as well.
ISBN: 9783030746643
Standard No.: 10.1007/978-3-030-74664-3doiSubjects--Topical Terms:
555385
Computer networks
--Security measures.
LC Class. No.: TK5105.59
Dewey Class. No.: 005.8
Android Malware Detection using Machine Learning = Data-Driven Fingerprinting and Threat Intelligence /
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