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Preprint article ยท Journal article

Analysis and Evaluation of SafeDroid v2.0, a Framework for Detecting Malicious Android Applications

From

Technical University of Denmark1

Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Embedded Systems Engineering, Department of Applied Mathematics and Computer Science, Technical University of Denmark3

University of Rome La Sapienza4

Android smartphones have become a vital component of the daily routine of millions of people, running a plethora of applications available in the official and alternative marketplaces. Although there are many security mechanisms to scan and filter malicious applications, malware is still able to reach the devices of many end-users.

In this paper, we introduce the SafeDroid v2.0 framework, that is a flexible, robust, and versatile open-source solution for statically analysing Android applications, based on machine learning techniques. The main goal of our work, besides the automated production of fully sufficient prediction and classification models in terms of maximum accuracy scores and minimum negative errors, is to offer an out-of-the-box framework that can be employed by the Android security researchers to efficiently experiment to find effective solutions: the SafeDroid v2.0 framework makes it possible to test many different combinations of machine learning classifiers, with a high degree of freedom and flexibility in the choice of features to consider, such as dataset balance and dataset selection.

The framework also provides a server, for generating experiment reports, and an Android application, for the verification of the produced models in real-life scenarios. An extensive campaign of experiments is also presented to show how it is possible to efficiently find competitive solutions: the results of our experiments confirm that SafeDroid v2.0 can reach very good performances, even with highly unbalanced dataset inputs and always with a very limited overhead.

Language: English
Publisher: Security and Communication Networks
Year: 2018
Pages: 1-15
ISSN: 19390122 and 19390114
Types: Preprint article and Journal article
DOI: 10.1155/2018/4672072
ORCIDs: 0000-0001-7615-2957 , Dragoni, Nicola and 0000-0001-6935-0701

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