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12 December 2025

Quantifying Privacy Risk of Mobile Apps as Textual Entailment Using Language Models

The Department of Computer Science, The Hang Seng University of Hong Kong, Hong Kong, China
This article belongs to the Section Privacy

Abstract

Smart phones have become an integral part of our lives in modern society, as we carry and use them throughout a day. However, this “body part” may maliciously collect and leak our personal information without our knowledge. When we install mobile applications on our smart phones and grant their permission requests, these apps can use sensors embedded in the smart phones and the stored data to gather and infer our personal information, preferences, and habits. In this paper, we present our preliminary results on quantifying the privacy risk of mobile applications by assessing whether requested permissions are necessary based on app descriptions through textual entailment decided by language models (LMs). We observe that despite incorporating various improvements of LMs proposed in the literature for natural language processing (NLP) tasks, the performance of the trained model remains far from ideal.

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