2024
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Automated Detection and Analysis of Data Practices Using A Real-World Corpus
Mukund Srinath
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Pranav Narayanan Venkit
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Maria Badillo
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Florian Schaub
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C. Giles
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Shomir Wilson
Findings of the Association for Computational Linguistics ACL 2024
Privacy policies are crucial for informing users about data practices, yet their length and complexity often deter users from reading them. In this paper, we propose an automated approach to identify and visualize data practices within privacy policies at different levels of detail. Leveraging crowd-sourced annotations from the ToS;DR platform, we experiment with various methods to match policy excerpts with predefined data practice descriptions. We further conduct a case study to evaluate our approach on a real-world policy, demonstrating its effectiveness in simplifying complex policies. Experiments show that our approach accurately matches data practice descriptions with policy excerpts, facilitating the presentation of simplified privacy information to users.
2017
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Identifying the Provision of Choices in Privacy Policy Text
Kanthashree Mysore Sathyendra
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Shomir Wilson
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Florian Schaub
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Sebastian Zimmeck
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Norman Sadeh
Proceedings of the 2017 Conference on Empirical Methods in Natural Language Processing
Websites’ and mobile apps’ privacy policies, written in natural language, tend to be long and difficult to understand. Information privacy revolves around the fundamental principle of Notice and choice, namely the idea that users should be able to make informed decisions about what information about them can be collected and how it can be used. Internet users want control over their privacy, but their choices are often hidden in long and convoluted privacy policy texts. Moreover, little (if any) prior work has been done to detect the provision of choices in text. We address this challenge of enabling user choice by automatically identifying and extracting pertinent choice language in privacy policies. In particular, we present a two-stage architecture of classification models to identify opt-out choices in privacy policy text, labelling common varieties of choices with a mean F1 score of 0.735. Our techniques enable the creation of systems to help Internet users to learn about their choices, thereby effectuating notice and choice and improving Internet privacy.
2016
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The Creation and Analysis of a Website Privacy Policy Corpus
Shomir Wilson
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Florian Schaub
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Aswarth Abhilash Dara
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Frederick Liu
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Sushain Cherivirala
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Pedro Giovanni Leon
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Mads Schaarup Andersen
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Sebastian Zimmeck
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Kanthashree Mysore Sathyendra
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N. Cameron Russell
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Thomas B. Norton
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Eduard Hovy
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Joel Reidenberg
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Norman Sadeh
Proceedings of the 54th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)