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ACSAC
2015
IEEE

Experimental Study with Real-world Data for Android App Security Analysis using Machine Learning

8 years 8 months ago
Experimental Study with Real-world Data for Android App Security Analysis using Machine Learning
Although Machine Learning (ML) based approaches have shown promise for Android malware detection, a set of critical challenges remain unaddressed. Some of those challenges arise in relation to proper evaluation of the detection approach while others are related to the design decisions of the same. In this paper, we systematically study the impact of these challenges as a set of research questions (i.e., hypotheses). We design an experimentation framework where we can reliably vary several parameters while evaluating ML-based Android malware detection approaches. The results from the experiments are then used to answer the research questions. Meanwhile, we also demonstrate the impact of some challenges on some existing ML-based approaches. The large (market-scale) dataset (benign and malicious apps) we use in the above experiments represents the real-world Android app security analysis scale. We envision this study to encourage the practice of employing a better evaluation strategy and...
Sankardas Roy, Jordan DeLoach, Yuping Li, Nic Hern
Added 13 Apr 2016
Updated 13 Apr 2016
Type Journal
Year 2015
Where ACSAC
Authors Sankardas Roy, Jordan DeLoach, Yuping Li, Nic Herndon, Doina Caragea, Xinming Ou, Venkatesh Prasad Ranganath, Hongmin Li, Nicolais Guevara
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