Evaluation of Advanced Ensemble Learning Techniques for Android Malware Detection

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Abstract

Android is the most well-known portable working framework having billions of dynamic clients worldwide that pulled in promoters, programmers, and cybercriminals to create malware for different purposes. As of late, wide-running inquiries have been led on malware examination and identification for Android gadgets while Android has likewise actualized different security controls to manage the malware issues, including a User ID (UID) for every application, framework authorizations. In this paper, we advance and assess various kinds of machine learning (ML) by applying ensemble-based learning systems for identifying Android malware related to a substring-based feature selection (SBFS) strategy for the classifiers. In the investigation, we have broadened our previous work where it has been seen that the ensemble-based learning techniques acquire preferred outcome over the recently revealed outcome by directing the DREBIN dataset, and in this manner they give a solid premise to building compelling instruments for Android malware detection.

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APA

Rana, M. S., & Sung, A. H. (2020). Evaluation of Advanced Ensemble Learning Techniques for Android Malware Detection. Vietnam Journal of Computer Science, 7(2), 145–159. https://doi.org/10.1142/S2196888820500086

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