Deceptive Patterns
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Data Privacy and Algorithmic Inequality

Author
Zhuang Liu, M. Sockin, Weie Xiong
Date
1 May 2023
Publisher
Social Science Research Network
Focus
Privacy & Data Protection
Category
Academic Scholar

A foundation for a consumer’s preference for data privacy is developed by linking it to the desire to hide behavioral vulnerabilities and a model is developed to assess the impact of data sharing on both the aggregate and cross-sectional distribution of consumer welfare.

This paper develops a foundation for a consumer’s preference for data privacy by linking it to the desire to hide behavioral vulnerabilities. Data sharing with digital platforms enhances the matching efficiency for standard consumption goods, but also exposes individuals with self-control issues to temptation goods. This creates a new form of inequality in the digital era—algorithmic inequality. Although data privacy regulations provide consumers with the option to opt out of data sharing, these regulations cannot fully protect vulnerable consumers because of data-sharing externalities. The coordination problem among consumers may also lead to multiple equilibria with drastically different levels of data sharing by consumers.