知识图谱的模块化推理方法

Changlong Wang, Siyun Bi, Rong Zhang, Qibin Fu, Tingting Gan
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引用次数: 0

摘要

知识图谱的构建和应用需要有效的推理支持。然而,由于标准推理引擎是整体加载和计算知识图的,因此不能有效地处理大规模知识图。提出了一种知识图的模块化推理方法。首先,将知识图中的事实根据谓词类型和实体划分为模块;然后使用事实模块中涉及的概念和属性作为种子签名,从模式中提取本体模块。在推理过程中,推理引擎部分加载事实模块和相关的本体模块。实验表明,该方法能够以模块化的方式处理大规模的知识图,节省了时间和内存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Modular Reasoning Approach to Knowledge Graph
The construction and application of Knowledge Graph require effective reasoning support. However, the standard reasoning engines can not effectively deal with large-scale Knowledge Graphs because they load and compute Knowledge Graphs as a whole. This paper proposes a modular reasoning approach to Knowledge Graph. Firstly, the facts in the Knowledge Graph are partitioned into modules according to the predicate type and entity. Then the concepts and attributes involved in the fact module are used as seed signatures to extract the ontology module from the schema. During the reasoning procedure, the reasoning engine partially loads fact modules and the related ontology modules. Experiments show that the proposed approach can deal with large-scale Knowledge Graphs in a modular way with less time and memory.
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