Exploring Unique App Signature of the Depressed and Non-depressed Through Their Fingerprints on Apps

M. Ahmed, Nova Ahmed
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引用次数: 2

Abstract

Growing research on re-identification through app usage behavior reveals the privacy threat in having smartphone usage data to third parties. However, re-identifiability of a vulnerable group like the depressed is unexplored. We fill this knowledge gap through an in the wild study on 100 students’ PHQ-9 scale’s data and 7 days’ logged app usage data. We quantify the uniqueness and re-identifiability through exploration of minimum hamming distance in terms of the set of used apps. Our findings show that using app usage data, each of the depressed and non-depressed students is re-identifiable. In fact, using only 7 hours’ data of a week, on average, 91% of the depressed and 88% of the non-depressed are re-identifiable. Moreover, data of a single app category (i.e., Tools) can also be used to re-identify each depressed student. Furthermore, we find that the rate of uniqueness among the depressed students is significantly higher in some app categories. For instance, in the Social Media category, the rate of uniqueness is 9% higher (P=.02, Cohen's d=1.31) and in the Health & Fitness category, this rate is 8% higher (P=.005, Cohen’s d=1.47) than the non-depressed group. Our findings suggest that each of the depressed students has a unique app signature which makes them re-identifiable. Therefore, during the design of the privacy protecting systems, designers need to consider the uniqueness of them to ensure better privacy for this vulnerable group.
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通过应用程序上的指纹探索抑郁症患者和非抑郁症患者的独特应用签名
越来越多通过应用程序使用行为进行再识别的研究揭示了将智能手机使用数据提供给第三方的隐私威胁。然而,像抑郁症这样的弱势群体的再识别性尚未得到探索。我们通过对100名学生的PHQ-9量表数据和7天的应用程序使用记录数据的野外研究来填补这一知识空白。我们通过探索使用过的应用程序集的最小汉明距离来量化独特性和可再识别性。我们的研究结果表明,使用应用程序的使用数据,每个抑郁和非抑郁的学生都可以被重新识别。事实上,平均使用一周7小时的数据,91%的抑郁症患者和88%的非抑郁症患者可以被重新识别。此外,单个应用程序类别(即工具)的数据也可以用于重新识别每个抑郁学生。此外,我们发现抑郁学生在某些应用类别中的独特性率明显更高。例如,在社交媒体类别中,唯一性率高出9% (P=。2002年,Cohen’s d=1.31),而在健康与健身类别中,这一比率高出8% (P= 1.31)。2005年,Cohen’s d=1.47)。我们的研究结果表明,每个抑郁的学生都有一个独特的应用签名,可以让他们重新被识别。因此,在设计隐私保护系统时,设计者需要考虑其独特性,以确保这一弱势群体获得更好的隐私。
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