The present study explores the intricacies of causal relationship extraction, a vital component in the pursuit of causality knowledge. Causality is frequently intertwined with temporal elements, as the progression from cause to effect is not instantaneous but rather ensconced in a temporal dimension. Thus, the extraction of temporal causality holds paramount significance in the field. In light of this, we propose a method for extracting causality from the text that integrates both temporal and causal relations, with a particular focus on the time aspect. To this end, we first compile a dataset that encompasses temporal relationships. Subsequently, we present a novel model, TC-GAT, which employs a graph attention mechanism to assign weights to the temporal relationships and leverages a causal knowledge graph to determine the adjacency matrix. Additionally, we implement an equilibrium mechanism to regulate the interplay between temporal and causal relations. Our experiments demonstrate that our proposed method significantly surpasses baseline models in the task of causality extraction.
翻译:本研究探索了因果关系提取的复杂性,这是追求因果关系知识的核心组成部分。因果关系往往与时间因素交织在一起,因为从原因到效果的进展不是瞬间完成的,而是沉浸在时间维度中的。因此,提取时间因果关系具有至关重要的意义。鉴于此,我们提出了一种从文本中提取因果关系的方法,融合了时间和因果关系,特别是针对时间因素。为此,我们首先编译了一个包括时间关系的数据集。随后,我们提出了一种新颖的模型TC-GAT,它采用图注意机制赋权时间关系,并利用因果知识图确定邻接矩阵。此外,我们实现了一个平衡机制来调节时间和因果关系之间的相互作用。我们的实验表明,我们提出的方法在因果提取任务中显著优于基线模型。