🌙

算法救援:用于自愿交易无偏个体数据的市场机制

Algorithms to the Rescue: Market Mechanisms for Consensual Trading of Unbiased Individual Data

Information Systems Research · 2025
被引 1
人大 AFT50UTD24ABS 4*

中文导读

提出一种算法市场机制,让中介平台能以近最优成本获取无偏个体数据样本,同时合理补偿用户隐私损失,优于固定补偿和集中优化方法,有助于建立透明公平的数据市场。

Abstract

This paper proposes a novel algorithmic market mechanism to address key challenges in individual data markets. Current data collection practices lack transparency and proper compensation, leading privacy-conscious users to opt out and creating biased data sets. Our proposed mechanism enables an intermediary platform to obtain unbiased samples of individual-level data while appropriately compensating users for privacy loss. Through theoretical analysis and simulations using both synthetic and real-world data sets, the authors demonstrate that their mechanism provides unbiased data samples at near-optimal cost compared with benchmark approaches. The mechanism outperforms both fixed-compensation methods and centralized-optimization approaches, even when platforms have partial information about user privacy preferences. Surprisingly, platforms achieve better outcomes by using this market mechanism rather than relying on estimated privacy preferences from user behavior. The approach is practical to implement, using straightforward sampling and conventional compensation mechanisms rather than complex techniques, like differential privacy. The mechanism enables creation of effective data markets that benefit both data subjects and buyers while ensuring compliance with regulations requiring transparency and consent. The findings are particularly relevant as new privacy regulations emerge globally and third-party tracking faces increased constraints, providing a viable solution for improving data quality and fairness in digital markets.

数据市场隐私保护算法机制设计数据科学