2022
DOI: 10.17762/ijcnis.v13i2.4937
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Ensemble Method for Mobile Malware Detection using N-Gram Sequences of System Calls

Abstract: Mobile device has become an essential tool among the community across the globe and has turned into a necessity in daily life. An extensive usage of mobile devices for everyday life tasks such as online banking, online shopping and exchanging e-mails has enable mobile devices to become data storage for users. The data stored in these mobile devices can contain sensitive and critical information to the users. Hence, making mobile devices as the prime target for cybercriminal. To date, Android based mobile devic… Show more

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“…We adopted an ngram-based solution and a probabilistic model approach because sequence analysis approaches are widely used in practice. As matter of fact, there are several research studies adopting n-grams (or similar algorithms) and probabilistic models to perform run-time detection of anomalies up to now [87,88,89,90,91,92]. Moreover, we did not include more complex approaches, such as neural networks-based approaches, since they require massive data for training [81,93,94].…”
Section: Threats To Validitymentioning
confidence: 99%
“…We adopted an ngram-based solution and a probabilistic model approach because sequence analysis approaches are widely used in practice. As matter of fact, there are several research studies adopting n-grams (or similar algorithms) and probabilistic models to perform run-time detection of anomalies up to now [87,88,89,90,91,92]. Moreover, we did not include more complex approaches, such as neural networks-based approaches, since they require massive data for training [81,93,94].…”
Section: Threats To Validitymentioning
confidence: 99%