计算机科学 ›› 2025, Vol. 52 ›› Issue (12): 260-270.doi: 10.11896/jsjkx.241100081
张晓明, 邱菁菁, 王会勇
ZHANG Xiaoming, QIU Jingjing, WANG Huiyong
摘要: 近年来,出现了多种基于嵌入的实体对齐方法,此类方法通过将实体和关系映射到低维向量空间,并计算这些向量表示来实现实体对齐。尽管这些方法都取得了很好的性能,但对其可解释性的研究相对较少。因此,提出了一种事后解释的实体对齐算法PE-EA,为基于知识图嵌入的实体对齐模型的预测结果生成解释。该方法首先通过计算知识图谱中实体及其关系的连接数来评估其功能性,进而量化实体邻域结构的重要性。之后,结合实体的功能性与实体的嵌入向量计算关系的嵌入向量,据此获取关系对的匹配概率。然后,根据模型预测实体对的邻域信息,计算邻域中候选解释对的匹配概率,筛选出预测实体对的解释三元组,将它们组合成解释子图。最后,引入类型商图概念,将解释子图抽象化,压缩数据并简化解释生成过程,从而在减少候选解释数量的同时,提升解释的质量和有效性。在5个常用的实验数据集上,使用fidelity和sparsity两种评价指标验证了模型生成的解释有较高的准确性和简洁性。
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