TriFlow: Triaging Android Applications using Speculative Information Flows

Omid Mirzaei, Guillermo Suarez-Tangil, J. Tapiador, J. M. D. Fuentes
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引用次数: 22

Abstract

Information flows in Android can be effectively used to give an informative summary of an application's behavior, showing how and for what purpose apps use specific pieces of information. This has been shown to be extremely useful to characterize risky behaviors and, ultimately, to identify unwanted or malicious applications in Android. However, identifying information flows in an application is computationally highly expensive and, with more than one million apps in the Google Play market, it is critical to prioritize applications that are likely to pose a risk. In this work, we develop a triage mechanism to rank applications considering their potential risk. Our approach, called TriFlow, relies on static features that are quick to obtain. TriFlow combines a probabilistic model to predict the existence of information flows with a metric of how significant a flow is in benign and malicious apps. Based on this, TriFlow provides a score for each application that can be used to prioritize analysis. TriFlow also provides an explanatory report of the associated risk. We evaluate our tool with a representative dataset of benign and malicious Android apps. Our results show that it can predict the presence of information flows very accurately and that the overall triage mechanism enables significant resource saving.
TriFlow:利用推测信息流对Android应用程序进行分类
Android中的信息流可以有效地用于提供应用程序行为的信息摘要,显示应用程序如何以及出于什么目的使用特定的信息片段。这已经被证明是非常有用的特征的危险行为,并最终识别不需要的或恶意应用程序在Android。然而,识别应用程序中的信息流在计算上是非常昂贵的,而且Google Play市场上有超过100万的应用程序,因此优先考虑可能构成风险的应用程序至关重要。在这项工作中,我们开发了一种分类机制,根据应用程序的潜在风险对其进行排名。我们的方法称为TriFlow,它依赖于可以快速获得的静态特性。TriFlow结合了一个概率模型来预测信息流的存在,并衡量信息流在良性和恶意应用程序中的重要性。在此基础上,TriFlow为每个应用程序提供了一个分数,可用于优先级分析。TriFlow还提供了相关风险的解释性报告。我们用良性和恶意Android应用程序的代表性数据集来评估我们的工具。我们的研究结果表明,它可以非常准确地预测信息流的存在,并且整个分类机制可以显着节省资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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