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Auteurs principaux: Liu, Yao, Liu, Zhilan, Tan, Tien Ping, Li, Yuxin
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2502.00351
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author Liu, Yao
Liu, Zhilan
Tan, Tien Ping
Li, Yuxin
author_facet Liu, Yao
Liu, Zhilan
Tan, Tien Ping
Li, Yuxin
contents Social event detection (SED) is a task focused on identifying specific real-world events and has broad applications across various domains. It is integral to many mobile applications with social features, including major platforms like Twitter, Weibo, and Facebook. By enabling the analysis of social events, SED provides valuable insights for businesses to understand consumer preferences and supports public services in handling emergencies and disaster management. Due to the hierarchical structure of event detection data, traditional approaches in Euclidean space often fall short in capturing the complexity of such relationships. While existing methods in both Euclidean and hyperbolic spaces have shown promising results, they tend to overlook multi-order relationships between events. To address these limitations, this paper introduces a novel framework, Multi-Order Hyperbolic Graph Convolution with Aggregated Attention (MOHGCAA), designed to enhance the performance of SED. Experimental results demonstrate significant improvements under both supervised and unsupervised settings. To further validate the effectiveness and robustness of the proposed framework, we conducted extensive evaluations across multiple datasets, confirming its superiority in tackling common challenges in social event detection.
format Preprint
id arxiv_https___arxiv_org_abs_2502_00351
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Order Hyperbolic Graph Convolution and Aggregated Attention for Social Event Detection
Liu, Yao
Liu, Zhilan
Tan, Tien Ping
Li, Yuxin
Social and Information Networks
Artificial Intelligence
Social event detection (SED) is a task focused on identifying specific real-world events and has broad applications across various domains. It is integral to many mobile applications with social features, including major platforms like Twitter, Weibo, and Facebook. By enabling the analysis of social events, SED provides valuable insights for businesses to understand consumer preferences and supports public services in handling emergencies and disaster management. Due to the hierarchical structure of event detection data, traditional approaches in Euclidean space often fall short in capturing the complexity of such relationships. While existing methods in both Euclidean and hyperbolic spaces have shown promising results, they tend to overlook multi-order relationships between events. To address these limitations, this paper introduces a novel framework, Multi-Order Hyperbolic Graph Convolution with Aggregated Attention (MOHGCAA), designed to enhance the performance of SED. Experimental results demonstrate significant improvements under both supervised and unsupervised settings. To further validate the effectiveness and robustness of the proposed framework, we conducted extensive evaluations across multiple datasets, confirming its superiority in tackling common challenges in social event detection.
title Multi-Order Hyperbolic Graph Convolution and Aggregated Attention for Social Event Detection
topic Social and Information Networks
Artificial Intelligence
url https://arxiv.org/abs/2502.00351