Fact verification is a challenging task that requires simultaneously reasoning and aggregating over multiple retrieved pieces of evidence to evaluate the truthfulness of a claim. Existing approaches typically (i) explore the semantic interaction between the claim and evidence at different granularity levels but fail to capture their topical consistency during the reasoning process, which we believe is crucial for verification; (ii) aggregate multiple pieces of evidence equally without considering their implicit stances to the claim, thereby introducing spurious information. To alleviate the above issues, we propose a novel topic-aware evidence reasoning and stance-aware aggregation model for more accurate fact verification, with the following four key properties: 1) checking topical consistency between the claim and evidence; 2) maintaining topical coherence among multiple pieces of evidence; 3) ensuring semantic similarity between the global topic information and the semantic representation of evidence; 4) aggregating evidence based on their implicit stances to the claim. Extensive experiments conducted on the two benchmark datasets demonstrate the superiority of the proposed model over several state-of-the-art approaches for fact verification. The source code can be obtained from https://github.com/jasenchn/TARSA.
翻译:事实核查是一项具有挑战性的任务,需要同时推理和汇集多套已检索到的证据,以评价索赔的真实性。现有办法通常:(一) 探索索赔与不同微粒级证据之间的语义互动,但在推理过程中未能反映其专题一致性,我们认为,这一点对核查至关重要;(二) 将多种证据同等地汇总,而不考虑其对索赔的隐含立场,从而引入虚假信息。为了缓解上述问题,我们提议采用新的专题证据推理和立场认知汇总模型,以便更准确地进行事实核实,其中包括以下四个关键属性:1) 检查索赔与证据之间的专题一致性;2) 保持多个证据之间的专题一致性;3) 确保全球专题信息与证据的语义表述之间的语义相似性;4) 根据对索赔的隐含立场收集证据。对两个基准数据集进行了广泛的实验,表明拟议模型优于若干州-艺术核实方法。源代码可从https://github.comjachen/TARSA获得。