A Knowledge Enhanced Learning and Semantic Composition Model for Multi-Claim Fact Checking
Shuai Wang, Penghui Wei, Qingchao Kong, Wenji Mao

TL;DR
This paper introduces a novel end-to-end model that enhances multi-claim fact checking by leveraging knowledge graphs and semantic composition to better verify complex, multi-claim statements.
Contribution
It proposes a new method combining KG-based learning enhancement and multi-claim semantic composition for improved multi-claim fact verification.
Findings
Outperforms existing methods on real-world and benchmark datasets.
Effectively captures contextual and compositional semantics in multi-claim statements.
Demonstrates significant accuracy improvements in multi-claim fact checking.
Abstract
To inhibit the spread of rumorous information and its severe consequences, traditional fact checking aims at retrieving relevant evidence to verify the veracity of a given claim. Fact checking methods typically use knowledge graphs (KGs) as external repositories and develop reasoning mechanism to retrieve evidence for verifying the triple claim. However, existing methods only focus on verifying a single claim. As real-world rumorous information is more complex and a textual statement is often composed of multiple clauses (i.e. represented as multiple claims instead of a single one), multiclaim fact checking is not only necessary but more important for practical applications. Although previous methods for verifying a single triple can be applied repeatedly to verify multiple triples one by one, they ignore the contextual information implied in a multi-claim statement and could not learn…
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Taxonomy
TopicsTopic Modeling · Advanced Graph Neural Networks · Data Quality and Management
