Personalized w-Event Privacy for Infinite Stream Estimation
Leilei Du, Xu Zhou, Peng Cheng, Lei Chen, Xuemin Lin, Wei Xi, Kenli Li

TL;DR
This paper introduces personalized privacy mechanisms for infinite data streams, enabling user-specific privacy preferences while maintaining accurate stream statistics.
Contribution
It proposes novel personalized privacy mechanisms and budget management techniques that adapt to user preferences in streaming data analysis.
Findings
Methods achieve personalized differential privacy guarantees.
Error reduction of at least 53.6% compared to existing algorithms.
Supports dynamic adjustment of privacy requirements.
Abstract
In applications such as event monitoring, log analysis, and video querying, -event privacy protects individual data within a sliding time window while supporting accurate stream statistics. Existing studies on infinite data streams mainly assume homogeneous privacy requirements for all users, which cannot capture user-specific privacy preferences. This paper studies personalized -event privacy for private data stream estimation. We first design the Personalized Window Size Mechanism (PWSM), which supports personalized privacy requirements at each time slot. Based on PWSM, we propose Personalized Budget Distribution (PBD) and Personalized Budget Absorption (PBA) to estimate streaming statistics under -Event Personalized Differential Privacy ((, )-EPDP). PBD guarantees that the budget reserved for…
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