Deep Learning-Based Attack Detection and Classification in Android Devices.
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Abstract
The increasing proliferation of Androidbased devices, which currently dominate the
market with a staggering 72% global market share, has made them a prime target for attackers.
Consequently, the detection of Android malware has emerged as a critical research area. Both
academia and industry have explored various approaches to develop robust and efficient solutions
for Android malware detection and classification, yet it remains an ongoing challenge. In this study,
we present a supervised learning technique that demonstrates promising results in Android malware
detection. The key to our approach lies in the creation of a comprehensive labeled dataset, comprising
over 18,000 samples classified into five distinct categories: Adware, Banking, SMS, Riskware, and
Benign applications. The effectiveness of our proposed model is validated using well-established
datasets such as CICMalDroid2020, CICMalDroid2017, and CICAndMal2017. Comparing our results
with state-of-the-art techniques in terms of precision, recall, efficiency, and other relevant factors,
our approach outperforms other semi-supervised methods in specific parameters. However, we
acknowledge that our model does not exhibit significant deviations when compared to alternative
approaches concerning certain aspects. Overall, our research contributes to the ongoing efforts in the
development of advanced techniques for Android malware detection and classification. We believe
that our findings will inspire further investigations, leading to enhanced security measures and
protection for Android devices in the face of evolving threats.
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Bibliographic citation
Gómez, A., & Muñoz, A. (2023). Deep Learning-Based Attack Detection and Classification in Android Devices. Electronics, 12(15), 3253. https://doi.org/10.3390/electronics12153253
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Except where otherwised noted, this item's license is described as Atribución 4.0 Internacional













