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  • An Android Malware Detectio...
    Lee, Sun-A; Yoon, A-Reum; Lee, Ji-Won; Lee, Kwangjae

    JOIV : international journal on informatics visualization Online, 03/2022, Letnik: 6, Številka: 1
    Journal Article

    As the number of cases of damage caused by malicious apps increases, accurate detection is required through various detection conditions, not just detection using simple techniques. In this paper, we propose a knowledge-based machine learning method using authority information and adding its usage counting features. This method is classifying training apps and malicious apps through machine learning using permission features in manifest.xml of Android apps. As a result of the experiment, accuracy, recall, precision, F1 score are 99.01%, 97.70%, 100.0%, 99.01%, respectively. Since Recall is higher than other indicators, it accurately predicts malicious apps as malicious. In other words, the proposed system is effective in preventing the distribution of malicious apps.