基于嵌入的配电网设备缺陷知识图异步实体分类算法框架

Yu Wang, Dapeng Yan, Peiqi Hou, Gang Chen, Hui Cao
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引用次数: 0

摘要

配电网设备的缺陷记录可以形成故障报告,为相关用户提供数据支持。知识图谱可以实现配电网设备缺陷记录的知识互联。实体分类是知识图谱完整任务中一个非常重要的子任务,它有利于知识图谱骨架结构的完善。因此,研究配电网设备缺陷的实体分类技术具有重要意义。目前,知识图的实体分类技术可以分为两种:基于异步的实体分类方法和基于同步的实体分类方法。提出了一种新的基于嵌入的异步实体分类算法框架。与基于同步训练的实体分类方法进行比较,验证了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embedding-Based Asynchronous Entity Classification Algorithm Framework for the Defect Knowledge Graph of Distribution Network Equipment
The defect record of distribution network equipment can form a fault report and provide data support for related users. Knowledge graph can be used to realize the knowledge interconnection of distribution network equipment defect records. Entity classification is a very important sub-task in the complete task of knowledge graph, which is beneficial to the perfection of skeleton structure in knowledge graph. Therefore, it is of great significance to study the entity classification technology of distribution network equipment defects. At present, the entity classification technology of knowledge graphs can be divided into two types: asynchronous-based entity classification method and synchronous-based entity classification method. This paper proposed a new embedding-based asynchronous entity classification algorithm framework. Compared with entity classification based on the synchronous training method, the performance of the proposed method was verified.
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