Understanding Privacy Awareness in Android App Descriptions Using Deep Learning

Johannes Feichtner, Stefan Gruber
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引用次数: 14

Abstract

Permissions are a key factor in Android to protect users' privacy. As it is often not obvious why applications require certain permissions, developer-provided descriptions in Google Play and third-party markets should explain to users how sensitive data is processed. Reliably recognizing whether app descriptions cover permission usage is challenging due to the lack of enforced quality standards and a variety of ways developers can express privacy-related facts. We introduce a machine learning-based approach to identify critical discrepancies between developer-described app behavior and permission usage. By combining state-of-the-art techniques in natural language processing (NLP) and deep learning, we design a convolutional neural network (CNN) for text classification that captures the relevance of words and phrases in app descriptions in relation to the usage of dangerous permissions. Our system predicts the likelihood that an app requires certain permissions and can warn about descriptions in which the requested access to sensitive user data and system features is textually not represented. We evaluate our solution on 77,000 real-world app descriptions and find that we can identify individual groups of dangerous permissions with a precision between 71% and 93%. To highlight the impact of individual words and phrases, we employ a model explanation algorithm and demonstrate that our technique can successfully bridge the semantic gap between described app functionality and its access to security- and privacy-sensitive resources.
利用深度学习理解Android应用描述中的隐私意识
权限是Android保护用户隐私的关键因素。由于应用程序需要特定权限的原因通常并不明显,开发者在Google Play和第三方市场中提供的描述应该向用户解释如何处理敏感数据。由于缺乏强制的质量标准和开发者表达隐私相关事实的各种方式,可靠地识别应用描述是否涵盖了许可使用是具有挑战性的。我们引入了一种基于机器学习的方法来识别开发人员描述的应用程序行为和权限使用之间的关键差异。通过结合最先进的自然语言处理(NLP)和深度学习技术,我们设计了一个用于文本分类的卷积神经网络(CNN),该网络可以捕获应用程序描述中与危险权限使用相关的单词和短语的相关性。我们的系统预测应用程序需要某些权限的可能性,并可以警告描述中请求访问敏感用户数据和系统功能的文本未表示。我们根据77,000个真实应用描述评估了我们的解决方案,发现我们可以识别出危险权限的单个组,准确率在71%到93%之间。为了突出单个单词和短语的影响,我们采用了模型解释算法,并证明我们的技术可以成功地弥合所描述的应用程序功能与其对安全和隐私敏感资源的访问之间的语义差距。
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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