基于低质量错误检测的规则增强噪声知识图嵌入

Y. Hong, Chenyang Bu, Tingting Jiang
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引用次数: 6

摘要

知识图在推荐系统、知识推理等领域得到了广泛的应用。将KGs嵌入到连续向量空间中很快得到了人们的广泛关注。然而,大多数传统的KG嵌入模型都假设现有KG中的所有事实都是完全正确的,而忽略了KG的构建通常涉及自动机制。这些自动构建过程不可避免地会产生大量的噪声和冲突,包括低质量的错误(如实体类型错误)。此外,这些低质量的噪声会极大地影响规则提取的质量,从而降低规则引导嵌入模型(RUGE)的效率。为了解决这一问题,提出了一种有效的消除三元组中实体类型错误的方法,并将其应用于RUGE。实验结果表明,对低质量噪声进行过滤可以极大地提高知识表示学习的准确性和规则的质量,进一步说明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rule-enhanced Noisy Knowledge Graph Embedding via Low-quality Error Detection
Knowledge graphs (KGs) have been widely applied in many fields such as recommendation systems and knowledge reasoning. Embedding KGs into a continuous vector space has quickly gained significant attention. However, most traditional KG embedding models assume that all the facts in the existing KGs are completely correct, ignoring that KG construction usually involves automatic mechanisms. These automatic construction processes inevitably generate a lot of noises and conflicts, including low-quality errors (e.g., entity type errors). Moreover, these low-quality noises could greatly influence the quality of rule extraction, which may reduce the efficiency of Rule-Guided Embedding model (RUGE). To address this problem, an efficient method to eliminate those entity type errors in triples is proposed and applied to RUGE. Experimental results demonstrate that the filtering of low-quality noises can greatly improve the accuracy of knowledge representation learning as well as the quality of rules, further illustrating the effectiveness of our method.
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