ARM: ANN-based ranking model for privacy and security analysis in smartphone ecosystems

M. Hatamian, Jetzabel M. Serna
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引用次数: 2

Abstract

Smartphone ecosystems are considered as a unique source due to the large number of apps which in turn makes an extensive use of personal data. Currently, there is no privacy and security preservation mechanism in smartphone ecosystems to enable users to compare apps in terms of privacy and security protection level, and to alarm them regarding the invasive issues (in terms of privacy and security) of apps before installing them. In this paper, we exploit user comments on app stores as an important source to extract privacy and security invasive (PSI) claims corresponding to apps. Thus, we propose an artificial neural network (ANN)-based ranking model (ARM) in order to classify user comments with privacy and security concerns. Our ranking model is based on three main features namely privacy and security, sentiment, and lifetime analyses as the input of the ranking model along with a novel mathematical formulation in such a way as to maximise the differentiation between comments. The performance results show that ARM is able to classify and predict PSI user comments with accuracy as high as 93.3%. Our findings confirm that due to the functionality of ARM, it has the potential to be widely adopted in smartphone ecosystems.
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ARM:基于人工神经网络的智能手机生态系统隐私和安全分析排名模型
智能手机生态系统被认为是一个独特的来源,因为大量的应用程序反过来又广泛使用个人数据。目前,智能手机生态系统中没有隐私安全保护机制,无法让用户对应用的隐私和安全保护水平进行比较,并在安装应用之前对应用的侵入性(隐私和安全方面)进行警告。在本文中,我们利用应用商店中的用户评论作为提取应用对应的隐私和安全入侵(PSI)索赔的重要来源。因此,我们提出了一种基于人工神经网络(ANN)的排序模型(ARM)来对用户评论进行隐私和安全分类。我们的排名模型基于三个主要特征,即隐私和安全,情感和生命周期分析,作为排名模型的输入,以及一种新颖的数学公式,以最大限度地区分评论。性能结果表明,ARM能够对PSI用户评论进行分类和预测,准确率高达93.3%。我们的研究结果证实,由于ARM的功能,它有可能在智能手机生态系统中被广泛采用。
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