Recent years have seen the proliferation of disinformation and fake news online. Traditional approaches to mitigate these issues is to use manual or automatic fact-checking. Recently, another approach has emerged: checking whether the input claim has previously been fact-checked, which can be done automatically, and thus fast, while also offering credibility and explainability, thanks to the human fact-checking and explanations in the associated fact-checking article. Here, we focus on claims made in a political debate and we study the impact of modeling the context of the claim: both on the source side, i.e., in the debate, as well as on the target side, i.e., in the fact-checking explanation document. We do this by modeling the local context, the global context, as well as by means of co-reference resolution, and multi-hop reasoning over the sentences of the document describing the fact-checked claim. The experimental results show that each of these represents a valuable information source, but that modeling the source-side context is most important, and can yield 10+ points of absolute improvement over a state-of-the-art model.
翻译:近些年来,在网上出现了虚假信息和假新闻的泛滥。减轻这些问题的传统办法是使用手工或自动核对事实。最近,出现了另一种方法:检查输入主张以前是否经过过事实检查,这可以自动进行,因而速度很快,同时也提供了可信度和解释性,这要归功于在相关事实核对文章中进行的人类事实检查和解释。这里,我们侧重于在政治辩论中提出的主张,我们研究模拟主张背景的影响:在来源方面,即在辩论中,以及在目标方面,即在事实核对解释文件中。我们这样做的方法是模拟当地环境、全球环境,以及共同参照决议的方式,以及对描述事实核对主张的文件的句子进行多动听的推理。实验结果显示,其中每一项都是宝贵的信息来源,但模拟来源方面是最重要的,并且可以比一个州式模型产生10+的绝对改进点。