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An End-to-End Multi-task Learning Model for Fact Checking

机译:事实检查的端到端多任务学习模型

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With huge amount of information generated every day on the web, fact checking is an important and challenging task which can help people identify the authenticity of most claims as well as providing evidences selected from knowledge source like Wikipedia. Here we decompose this problem into two parts: an entity linking task (retrieving relative Wikipedia pages) and recognizing textual entailment between the claim and selected pages. In this paper, we present an end-to-end multi-task learning with bi-direction attention (EMBA) model to classify the claim as "supports", "refutes" or "not enough info" with respect to the pages retrieved and detect sentences as evidence at the same time. We conduct experiments on the FEVER (Fact Extraction and VERification) paper test dataset and shared task test dataset, a new public dataset for verification against textual sources. Experimental results show that our method achieves comparable performance compared with the baseline system.
机译:通过每天在网络上生成的大量信息,事实检查是一个重要而充满挑战的任务,可以帮助人们确定大多数索赔的真实性以及提供从Wikipedia这样的知识来源选择的证据。在这里,我们将此问题分解为两个部分:一个实体链接任务(检索相对维基百科页面)并识别索赔和所选页面之间的文本鉴定。在本文中,我们介绍了一个与双向关注(EMBA)模型的端到端的多任务学习,以将索赔分类为“支持”,“驳斥”或“不足的信息”,以及所检索的页面在同一时间检测作为证据的句子。我们对发烧(事实提取和验证)纸张测试数据集和共享任务测试数据集进行实验,这是一个新的公共数据集,用于验证文本源。实验结果表明,与基线系统相比,我们的方法实现了可比性。

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