模型鲁棒性:关系抽取中实体的上下文反事实生成

Mi Zhang, T. Qian, Ting Zhang, Xin Miao
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引用次数: 1

摘要

关系抽取(RE)的目标是抽取文本中实体之间的语义关系。作为信息系统的一项基础任务,保证可重构模型的鲁棒性至关重要。尽管目前深度神经模型在RE任务中已经取得了很高的精度,但它们很容易受到伪相关的影响。这个问题的一个解决方案是用反事实增强数据(CAD)训练模型,这样它就可以学习因果关系而不是混淆。然而,没有尝试为RE任务生成反事实。在本文中,我们从实体中心的角度阐述了自动生成可重构任务CAD的问题,并开发了一种新的方法来导出实体的上下文反事实。具体来说,我们利用句法和语义依赖图中的两个基本拓扑属性,即中心性和最短路径,首先识别实体的上下文因果特征,然后干预实体的上下文因果特征。我们将我们提出的方法与各种RE主干相结合,对四个RE数据集进行了综合评估。结果证明,我们的方法不仅提高了主干网的性能,而且使其在域外测试中具有更强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Model Robustness: Generating Contextual Counterfactuals for Entities in Relation Extraction
The goal of relation extraction (RE) is to extract the semantic relations between/among entities in the text. As a fundamental task in information systems, it is crucial to ensure the robustness of RE models. Despite the high accuracy current deep neural models have achieved in RE tasks, they are easily affected by spurious correlations. One solution to this problem is to train the model with counterfactually augmented data (CAD) such that it can learn the causation rather than the confounding. However, no attempt has been made on generating counterfactuals for RE tasks. In this paper, we formulate the problem of automatically generating CAD for RE tasks from an entity-centric viewpoint, and develop a novel approach to derive contextual counterfactuals for entities. Specifically, we exploit two elementary topological properties, i.e., the centrality and the shortest path, in syntactic and semantic dependency graphs, to first identify and then intervene on the contextual causal features for entities. We conduct a comprehensive evaluation on four RE datasets by combining our proposed approach with a variety of RE backbones. Results prove that our approach not only improves the performance of the backbones but also makes them more robust in the out-of-domain test 1.
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