Few-shot relation extraction (FSRE) is of great importance in long-tail distribution problem, especially in special domain with low-resource data. Most existing FSRE algorithms fail to accurately classify the relations merely based on the information of the sentences together with the recognized entity pairs, due to limited samples and lack of knowledge. To address this problem, in this paper, we proposed a novel entity CONCEPT-enhanced FEw-shot Relation Extraction scheme (ConceptFERE), which introduces the inherent concepts of entities to provide clues for relation prediction and boost the relations classification performance. Firstly, a concept-sentence attention module is developed to select the most appropriate concept from multiple concepts of each entity by calculating the semantic similarity between sentences and concepts. Secondly, a self-attention based fusion module is presented to bridge the gap of concept embedding and sentence embedding from different semantic spaces. Extensive experiments on the FSRE benchmark dataset FewRel have demonstrated the effectiveness and the superiority of the proposed ConceptFERE scheme as compared to the state-of-the-art baselines. Code is available at https://github.com/LittleGuoKe/ConceptFERE.
翻译:为了解决这个问题,我们在本文件中提议成立一个新的实体CentreT-enfant FEw-shot Relation Explication Prophile (ConferE),提出实体的固有概念,为关系预测提供线索,提高关系分类性能。首先,开发了一个概念-坚持关注模块,通过计算判决和概念之间的语义相似性,从每个实体的多个概念中选择最适当的概念。第二,提出一个基于自我注意的融合模块,以弥合从不同语义空间嵌入和判决的概念差距。关于FSRE基准数据集的深入实验,Worf Rel展示了拟议的概念-FE计划相对于国家-艺术基线的有效性和优越性。可在 http://Gisfremus/KUp./stallLcomi 代码 https://gregrepus/GUnisteleb.E./Lcom。