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Multi-Evidence based Fact Verification via A Confidential Graph Neural Network

Authors :
Lan, Yuqing
Liu, Zhenghao
Gu, Yu
Yi, Xiaoyuan
Li, Xiaohua
Yang, Liner
Yu, Ge
Publication Year :
2024

Abstract

Fact verification tasks aim to identify the integrity of textual contents according to the truthful corpus. Existing fact verification models usually build a fully connected reasoning graph, which regards claim-evidence pairs as nodes and connects them with edges. They employ the graph to propagate the semantics of the nodes. Nevertheless, the noisy nodes usually propagate their semantics via the edges of the reasoning graph, which misleads the semantic representations of other nodes and amplifies the noise signals. To mitigate the propagation of noisy semantic information, we introduce a Confidential Graph Attention Network (CO-GAT), which proposes a node masking mechanism for modeling the nodes. Specifically, CO-GAT calculates the node confidence score by estimating the relevance between the claim and evidence pieces. Then, the node masking mechanism uses the node confidence scores to control the noise information flow from the vanilla node to the other graph nodes. CO-GAT achieves a 73.59% FEVER score on the FEVER dataset and shows the generalization ability by broadening the effectiveness to the science-specific domain.<br />Comment: 12pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.10481
Document Type :
Working Paper