A Proposed Artificial Intelligence Model for Android-Malware Detection

Author:

Taher Fatma1ORCID,Al Fandi Omar1,Al Kfairy Mousa1ORCID,Al Hamadi Hussam2,Alrabaee Saed3

Affiliation:

1. College of Technological Innovation, Zayed University, Dubai 19282, United Arab Emirates

2. College of Engineering and IT, University of Dubai, Dubai 14143, United Arab Emirates

3. College of Information Technology, United Arab Emirates University, Al Ain 15551, United Arab Emirates

Abstract

There are a variety of reasons why smartphones have grown so pervasive in our daily lives. While their benefits are undeniable, Android users must be vigilant against malicious apps. The goal of this study was to develop a broad framework for detecting Android malware using multiple deep learning classifiers; this framework was given the name DroidMDetection. To provide precise, dynamic, Android malware detection and clustering of different families of malware, the framework makes use of unique methodologies built based on deep learning and natural language processing (NLP) techniques. When compared to other similar works, DroidMDetection (1) uses API calls and intents in addition to the common permissions to accomplish broad malware analysis, (2) uses digests of features in which a deep auto-encoder generates to cluster the detected malware samples into malware family groups, and (3) benefits from both methods of feature extraction and selection. Numerous reference datasets were used to conduct in-depth analyses of the framework. DroidMDetection’s detection rate was high, and the created clusters were relatively consistent, no matter the evaluation parameters. DroidMDetection surpasses state-of-the-art solutions MaMaDroid, DroidMalwareDetector, MalDozer, and DroidAPIMiner across all metrics we used to measure their effectiveness.

Funder

UAE University

Zayed University

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction,Communication

Reference71 articles.

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