2024
DOI: 10.3390/info15010025
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Explainable Machine Learning for Malware Detection on Android Applications

Catarina Palma,
Artur Ferreira,
Mário Figueiredo

Abstract: The presence of malicious software (malware), for example, in Android applications (apps), has harmful or irreparable consequences to the user and/or the device. Despite the protections app stores provide to avoid malware, it keeps growing in sophistication and diffusion. In this paper, we explore the use of machine learning (ML) techniques to detect malware in Android apps. The focus is on the study of different data pre-processing, dimensionality reduction, and classification techniques, assessing the genera… Show more

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“…Man-made threats are man-made attacks on the NIS. By looking for the weakness of the system, the purpose of destroying, cheating, and stealing data and information is achieved in an unauthorized way (Palma et al, 2024). In contrast, many types of well-designed manmade attack threats are difficult to prevent.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Man-made threats are man-made attacks on the NIS. By looking for the weakness of the system, the purpose of destroying, cheating, and stealing data and information is achieved in an unauthorized way (Palma et al, 2024). In contrast, many types of well-designed manmade attack threats are difficult to prevent.…”
Section: Literature Reviewmentioning
confidence: 99%