Leveraging contextual knowledge has become standard practice in automated claim verification, yet the impact of temporal reasoning has been largely overlooked. Our study demonstrates that time positively influences the claim verification process of evidence-based fact-checking. The temporal aspects and relations between claims and evidence are first established through grounding on shared timelines, which are constructed using publication dates and time expressions extracted from their text. Temporal information is then provided to RNN-based and Transformer-based classifiers before or after claim and evidence encoding. Our time-aware fact-checking models surpass base models by up to 9% Micro F1 (64.17%) and 15% Macro F1 (47.43%) on the MultiFC dataset. They also outperform prior methods that explicitly model temporal relations between evidence. Our findings show that the presence of temporal information and the manner in which timelines are constructed greatly influence how fact-checking models determine the relevance and supporting or refuting character of evidence documents.
翻译:利用背景知识已成为自动索赔核实的标准做法,但时间推理的影响在很大程度上被忽略。我们的研究显示,时间对基于证据的实况调查的索偿核实过程产生了积极的影响。索赔和证据之间的时间方面和关系首先通过共同的时间表来确定,这些时间表是使用发布日期和从文本中提取的时间表达方式构建的。然后在索赔和证据编码之前或之后向基于RNN和基于变异器的分类者提供时间信息。我们的时间识别事实核对模型在多功能金融数据集中超过基准模型的高达9%Mic F1(64.17 %)和15%Mroc F1(47.43 % ),它们也超越了以前明确模拟证据间时间关系的方法。我们的调查结果显示,时间信息的存在和时间设置方式对事实核查模型如何确定证据文件的相关性和支持或重复特征产生了重大影响。</s>