🌙

隐私政策变更的自动化分析:一种结构化自注意力句子嵌入方法

Automated Analysis of Changes in Privacy Policies: a Structured Self-Attentive Sentence Embedding Approach

MIS Quarterly · 2024
被引 32 · 同刊同年前 5%
人大 A+FT50UTD24ABS 4*

中文导读

设计了一个隐私政策演化分析框架,包含自注意力标注系统(SAAS),自动标注隐私政策段落以识别数据实践,在OPP-115数据集上优于传统模型,并通过亚马逊案例展示GDPR影响。

Abstract

The increasing societal concern for consumer information privacy has led to the enforcement of privacy regulations worldwide. In an effort to adhere to privacy regulations such as the General Data Protection Regulation (GDPR), many companies’ privacy policies have become increasingly lengthy and complex. In this study, we adopted the computational design science paradigm to design a novel privacy policy evolution analytics framework to help identify how companies change and present their privacy policies based on privacy regulations. The framework includes a self-attentive annotation system (SAAS) that automatically annotates paragraph-length segments in privacy policies to help stakeholders identify data practices of interest for further investigation. We rigorously evaluated SAAS against state-of-the-art machine learning (ML) and deep learning (DL)-based methods on a well-established privacy policy dataset, OPP-115. SAAS outperformed conventional ML and DL models in terms of F1-score by statistically significant margins. We demonstrate the proposed framework’s practical utility with an in-depth case study of GDPR’s impact on Amazon’s privacy policies. The case study results indicate that Amazon’s post-GDPR privacy policy potentially violates a fundamental principle of GDPR by causing consumers to exert more effort to find information about first-party data collection. Given the increasing importance of consumer information privacy, the proposed framework has important implications for regulators and companies. We discuss several design principles followed by the SAAS that can help guide future design science-based e-commerce, health, and privacy research.

隐私政策自然语言处理深度学习信息隐私计算设计科学