Semantic relationships, such as hyponym-hypernym, cause-effect, meronym-holonym etc. between a pair of entities in a sentence are usually reflected through syntactic patterns. Automatic extraction of such patterns benefits several downstream tasks, including, entity extraction, ontology building, and question answering. Unfortunately, automatic extraction of such patterns has not yet received much attention from NLP and information retrieval researchers. In this work, we propose an attention-based supervised deep learning model, ASPER, which extracts syntactic patterns between entities exhibiting a given semantic relation in the sentential context. We validate the performance of ASPER on three distinct semantic relations -- hyponym-hypernym, cause-effect, and meronym-holonym on six datasets. Experimental results show that for all these semantic relations, ASPER can automatically identify a collection of syntactic patterns reflecting the existence of such a relation between a pair of entities in a sentence. In comparison to the existing methodologies of syntactic pattern extraction, ASPER's performance is substantially superior.
翻译:在这项工作中,我们提出了一个基于关注的、有监督的深层次学习模式,即ASPER,它提取了在感应背景下表现出某种语义关系的实体之间的综合方法模式。我们验证了ASPER在三种不同的语义关系上的表现 -- -- 低语-超音率、因果关系、因果关系和六套数据集上的线性-线性关系。实验结果显示,所有这些语义关系中,ASPER可以自动识别反映一对判决中实体之间这种关系存在的一系列综合方法模式。与现有的合成模式提取方法相比,ASPER的性能非常高。