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LSTM android malicious behavior analysis based on feature weighting

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journal contribution
posted on 2021-06-30, 00:00 authored by Q Yang, X Wang, J Zheng, W Ge, M Bai, F Jiang
With the rapid development of mobile Internet, smart phones have been widely popularized, among which Android platform dominates. Due to it is open source, malware on the Android platform is rampant. In order to improve the efficiency of malware detection, this paper proposes deep learning Android malicious detection system based on behavior features. First of all, the detection system adopts the static analysis method to extract different types of behavior features from Android applications, and extract sensitive behavior features through Term frequency-inverse Document Frequency algorithm for each extracted behavior feature to construct detection features through unified abstract expression. Secondly, Long Short-Term Memory neural network model is established to select and learn from the extracted attributes and the learned attributes are used to detect Android malicious applications, Analysis and further optimization of the application behavior parameters, so as to build a deep learning Android malicious detection method based on feature analysis. We use different types of features to evaluate our method and compare it with various machine learning-based methods. Study shows that it outperforms most existing machine learning based approaches and detects 95.31% of the malware.

History

Journal

KSII transactions on internet and information systems

Volume

15

Pagination

2188-2203

Location

Seoul, Republic of Korea

Open access

  • Yes

ISSN

1976-7277

eISSN

2288-1468

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

6

Publisher

Korean Society for Internet Information (KSII)

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