首页> 外文会议>First workshop on fact extraction and VERification 2018 >DeFactoNLP: Fact Verification using Entity Recognition, TFIDF Vector Comparison and Decomposable Attention
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DeFactoNLP: Fact Verification using Entity Recognition, TFIDF Vector Comparison and Decomposable Attention

机译:DeFactoNLP:使用实体识别,TFIDF向量比较和可分解注意进行事实验证

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In this paper, we describe DeFactoNLP, the system we designed for the FEVER 2018 Shared Task. The aim of this task was to conceive a system that can not only automatically assess the veracity of a claim but also retrieve evidence supporting this assessment from Wikipedia. In our approach, the Wikipedia documents whose Term Frequency-Inverse Document Frequency (TFIDF) vectors are most similar to the vector of the claim and those documents whose names are similar to those of the named entities (NEs) mentioned in the claim are identified as the documents which might contain evidence. The sentences in these documents are then supplied to a textual entailment recognition module. This module calculates the probability of each sentence supporting the claim, contradicting the claim or not providing any relevant information to assess the veracity of the claim. Various features computed using these probabilities are finally used by a Random Forest classifier to determine the overall truthfulness of the claim. The sentences which support this classification are returned as evidence. Our approach achieved a 0.4277 evidence F1-score, a 0.5136 label accuracy and a 0.3833 FEVER score.
机译:在本文中,我们描述了DeFactoNLP,这是我们为FEVER 2018共享任务设计的系统。这项任务的目的是设计一个系统,该系统不仅可以自动评估声明的准确性,还可以从Wikipedia检索支持该评估的证据。在我们的方法中,术语频率-反文档频率(TFIDF)向量与权利要求的向量最相似的维基百科文档,以及名称与权利要求中提到的命名实体(NE)的名称相似的那些文档,被标识为可能包含证据的文件。然后将这些文档中的句子提供给文本蕴含识别模块。该模块计算每个句子支持该要求,与该要求相矛盾或不提供任何相关信息以评估该要求的准确性的概率。最后,随机森林分类器使用使用这些概率计算出的各种特征来确定索赔的总体真实性。支持该分类的句子将作为证据返回。我们的方法获得了0.4277的F1得分,0.5136的标签准确度和0.3833的FEVER得分。

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