Adaptive Differentially Private Structural Entropy Minimization for Unsupervised Social Event Detection
Zhiwei Yang, Yuecen Wei, Haoran Li, Qian Li, Lei Jiang, Li Sun,, Xiaoyan Yu, Chunming Hu, Hao Peng

TL;DR
This paper introduces ADP-SEMEvent, an unsupervised social event detection framework that uses adaptive differential privacy and structural entropy minimization to effectively detect events while preserving user privacy in social media data streams.
Contribution
The paper presents a novel unsupervised social event detection method combining adaptive differential privacy with a structural entropy minimization algorithm, enhancing privacy and utility.
Findings
Achieves detection performance comparable to state-of-the-art methods.
Effectively balances privacy preservation with data utility.
Demonstrates robustness on public social media datasets.
Abstract
Social event detection refers to extracting relevant message clusters from social media data streams to represent specific events in the real world. Social event detection is important in numerous areas, such as opinion analysis, social safety, and decision-making. Most current methods are supervised and require access to large amounts of data. These methods need prior knowledge of the events and carry a high risk of leaking sensitive information in the messages, making them less applicable in open-world settings. Therefore, conducting unsupervised detection while fully utilizing the rich information in the messages and protecting data privacy remains a significant challenge. To this end, we propose a novel social event detection framework, ADP-SEMEvent, an unsupervised social event detection method that prioritizes privacy. Specifically, ADP-SEMEvent is divided into two stages, i.e.,…
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