Learning To Sample the Meta-Paths for Social Event Detection
Congbo Ma, Hu Wang, Zitai Qiu, Shan Xue, Jia Wu, Jian Yang, Preslav, Nakov, Quan Z. Sheng

TL;DR
This paper introduces an end-to-end Learning To Sample framework that automatically identifies the most important meta-paths in heterogeneous information networks to improve social event detection accuracy.
Contribution
It proposes a novel meta-path sampling method that reduces reliance on human effort and enhances the effectiveness of social event detection models.
Findings
Effective meta-paths are automatically discovered for social event detection.
The framework improves detection performance by selecting influential meta-paths.
An evaluation process guides meta-path importance assessment during training.
Abstract
Social media data is inherently rich, as it includes not only text content, but also users, geolocation, entities, temporal information, and their relationships. This data richness can be effectively modeled using heterogeneous information networks (HINs) as it can handle multiple types of nodes and relationships, allowing for a comprehensive representation of complex interactions within social data. Meta-path-based methods use the sequences of relationships between different types of nodes in an HIN to capture the diverse and rich relationships within the social networks. However, the performance of social event detection methods is highly sensitive to the selection of meta-paths and existing meta-path based detectors either rely on human efforts or struggle to determining the effective meta-path set for model training and evaluation. In order to automatically discover the most…
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Visualization and Analytics
