Android Malware Detection System using Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @PhdThesis{Abdullah:thesis,
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author = "Norliza Binti Abdullah",
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title = "Android Malware Detection System using Genetic
Programming",
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school = "Computer Science, University of York",
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year = "2019",
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address = "UK",
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month = mar,
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keywords = "genetic algorithms, genetic programming, Supervised
Learning, Multi-objective Genetic Algorithm, SPEA2,
MOGP, Android Malware",
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URL = "https://etheses.whiterose.ac.uk/29027/",
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URL = "https://etheses.whiterose.ac.uk/29027/6/Abdullah_201051902.pdf",
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size = "165 pages",
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abstract = "Nowadays, smartphones and other mobile devices are
playing a significant role in the way people engage in
entertainment, communicate, network, work, and bank and
shop online. As the number of mobile phones sold has
increased dramatically worldwide, so have the security
risks faced by the users, to a degree most do not
realise. One of the risks is the threat from mobile
malware. In this research, we investigate how
supervised learning with evolutionary computation can
be used to synthesise a system to detect Android mobile
phone attacks. The attacks include malware, ransomware
and mobile botnets. The datasets used in this research
are publicly downloadable, available for use with
appropriate acknowledgement. The primary source is
Drebin. We also used ransomware and mobile botnet
datasets from other Android mobile phone researchers.
The research in this thesis uses Genetic Programming
(GP) to evolve programs to distinguish malicious and
non-malicious applications in Android mobile datasets.
It also demonstrates the use of GP and Multi-Objective
Evolutionary Algorithms (MOEAs) together to explore
functional (detection rate) and non-functional
(execution time and power consumption) trade-offs. Our
results show that malicious and non-malicious
applications can be distinguished effectively using
only the permissions held by applications recorded in
the application's Android Package (APK). Such a
minimalist source of features can serve as the basis
for highly efficient Android malware detection.
Non-functional tradeoffs are also highlight.",
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notes = "Also known as \cite{wreo29027}
uk.bl.ethos.832567",
- }
Genetic Programming entries for
Norliza Binti Abdullah
Citations