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Android malware detection using hybrid ANFIS architecture with low computational cost convolutional layers

İsmail Atacak, Kazım Kılıç, İbrahim Alper Doğru

2022PeerJ Computer Science18 citationsDOIOpen Access PDF

Abstract

Background: Android is the most widely used operating system all over the world. Due to its open nature, the Android operating system has become the target of malicious coders. Ensuring privacy and security is of great importance to Android users. Methods: In this study, a hybrid architecture is proposed for the detection of Android malware from the permission information of applications. The proposed architecture combines the feature extraction power of the convolutional neural network (CNN) architecture and the decision making capability of fuzzy logic. Our method extracts features from permission information with a small number of filters and convolutional layers, and also makes the feature size suitable for ANFIS input. In addition, it allows the permission information to affect the classification without being neglected. In the study, malware was obtained from two different sources and two different data sets were created. In the first dataset, Drebin was used for malware applications, and in the second dataset, CICMalDroid 2020 dataset was used for malware applications. For benign applications, the Google Play Store environment was used. Results: -score of 94.6% on the weighted average were achieved. The results obtained in the study show that the proposed method outperforms both classical machine learning algorithms and fuzzy logic-based studies.

Topics & Concepts

Computer scienceAndroid (operating system)MalwarePermissionConvolutional neural networkArtificial intelligenceData miningMachine learningFeature extractionArchitectureOperating systemArtVisual artsLawPolitical scienceAdvanced Malware Detection TechniquesDigital and Cyber ForensicsIoT and GPS-based Vehicle Safety Systems
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