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HHGN: A Hierarchical Reasoning-based Heterogeneous Graph Neural Network for fact verification

机译:HHGN:基于分层推理的异构图形神经网络,用于实况验证

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摘要

Fact verification aims to retrieve related evidence from raw text to verify the correctness of a given claim. Existing works mainly leverage the single-granularity features for the representation learning of evidences, i.e., sentence features, ignoring other features like entity-level and context-level features. In addition, they usually focus on improving the prediction accuracy while lacking the interpretability of the inference process, which leads to unreliable results. Thus, in this paper, to investigate how to utilize multi-granularity semantic units for evidence representation as well as to improve the explainability of evidence reasoning, we propose a Hierarchical Reasoning-based Heterogeneous Graph Neural Network for fact verification (HHGN). HHGN combines multiple features of entity, sentence as well as context for evidence representation, and employs a heterogeneous graph to capture their semantic relations. Inspired by the human inference process, we design a hierarchical reasoning-based node updating strategy to propagate the evidence features. Then, we extract the potential reasoning paths from the graph to predict the label, which aggregates the results of different paths weighted by their relevance to the claim. We evaluate our proposal on FEVER, a large-scale benchmark dataset for fact verification. Our experimental results demonstrate the superiority of HHGN over the competitive baselines in both single evidence and multiple evidences settings. In addition, HHGN presents reasonable interpretability in the form of aggregating the features of relevant entity units and selecting the evidence sentences with high confidence.
机译:事实验证旨在从原始文本中检索相关证据以验证给定索赔的正确性。现有作品主要利用单粒度特征,了解证据的表示学习,即句子功能,忽略实体级别和上下文级别的其他功能。此外,它们通常专注于提高预测准确性,同时缺乏推理过程的可解释性,这导致了不可靠的结果。因此,在本文中,调查如何利用多粒度语义单元进行证据代表,以及提高证据推理的解释性,我们提出了一种基于分层推理的异构图形神经网络,用于进行实况验证(HHGN)。 HHGN结合了实体,句子以及上下文的多个特征,以获取证据表示,并采用异质图来捕获其语义关系。灵感来自人类推理过程,我们设计了一种基于分层推理的节点更新策略来传播证据功能。然后,我们从图中提取潜在的推理路径以预测标签,该标签聚合由其与权利要求的相关性加权的不同路径的结果。我们评估我们的发烧提案,是一个大规模的基准数据集,以进行实况验证。我们的实验结果表明了HHGN在单一证据和多次证据设置中的竞争基础上的优越性。此外,HHGN以汇总相关实体单位的特征,并以高信任选择证据句子的形式呈现合理的解释性。

著录项

  • 来源
    《Information Processing & Management》 |2021年第5期|102659.1-102659.14|共14页
  • 作者单位

    Science and Technology on Information Systems Engineering Laboratory National University of Defense Technology Changsha Hunan China;

    Science and Technology on Information Systems Engineering Laboratory National University of Defense Technology Changsha Hunan China;

    Business School Hunan University Changsha Hunan China;

    Science and Technology on Information Systems Engineering Laboratory National University of Defense Technology Changsha Hunan China;

    Science and Technology on Information Systems Engineering Laboratory National University of Defense Technology Changsha Hunan China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fact verification; Graph neural network; Hierarchical reasoning; Heterogeneous graph;

    机译:事实验证;图形神经网络;层次推理;异质图;
  • 入库时间 2022-08-19 02:25:57

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