AI RESEARCH
Avoiding Over-smoothing in Social Media Rumor Detection with Pre-trained Propagation Tree Transformer
arXiv CS.AI
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ArXi:2603.22854v1 Announce Type: cross Deep learning techniques for rumor detection typically utilize Graph Neural Networks (GNNs) to analyze post relations. These methods, however, falter due to over-smoothing issues when processing rumor propagation structures, leading to declining performance. Our investigation into this issue reveals that over-smoothing is intrinsically tied to the structural characteristics of rumor propagation trees, in which the majority of nodes are 1-level nodes. Furthermore, GNNs struggle to capture long-range dependencies within these trees.