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Reasoning over Entity-Action-Location Graph for Procedural Text Understanding

机译:推理在程序文本理解的实体 - 行动定位图中

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摘要

Procedural text understanding aims at tracking the states (e.g.. create, move, destroy) and locations of the entities mentioned in a given paragraph. To effectively track the states and locations, it is essential to capture the rich semantic relations between entities, actions, and locations in the paragraph. Although recent works have achieved substantial progress, most of them focus on leveraging the inherent constraints or incorporating external knowledge for state prediction. The rich semantic relations in the given paragraph are largely overlooked. In this paper, we propose a novel approach (REAL) to procedural text understanding, where we build a general framework to systematically model the entity-entity, entity-action, and entity-location relations using a graph neural network. We further develop algorithms for graph construction, representation learning, and state and location tracking. We evaluate the proposed approach on two benchmark datasets, ProPara, and Recipes. The experimental results show that our method outperforms strong baselines by a large margin, i.e., 5.0% on ProPara and 3.2% on Recipes, illustrating the utility of semantic relations and the effectiveness of the graph-based reasoning model.
机译:程序文本的理解旨在跟踪在给定段落中提到的实体的州(例如创建,移动,销毁)和位置。为了有效跟踪国家和地点,必须捕捉该段落中的实体,行为和地点之间的丰富语义关系。尽管最近的作品取得了实质性的进展,但大多数人都专注于利用固有的限制或纳入国家预测的外部知识。众多段落中的丰富语义关系在很大程度上被忽视了。在本文中,我们提出了一种新的方法(Real)到程序文本理解,在那里我们建立了一种通过图形神经网络系统地模拟实体实体,实体 - 动作和实体位置关系的一般框架。我们进一步开发用于图形构造,表示学习和状态和位置跟踪的算法。我们评估了两个基准数据集,Propara和食谱的建议方法。实验结果表明,我们的方法优于大边缘,即Propara的5.0%,食谱的3.2%,说明了语义关系的效用和基于图形的推理模型的有效性。

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