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Power entity recognition based on bidirectional long short-term memory and conditional random fields

机译:基于双向长短期记忆和条件随机场的电力实体识别

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摘要

With the application of artificial intelligence technology in the power industry,the knowledge graph is expected to play a key role in power grid dispatch processes,intelligent maintenance,and customer service response provision.Knowledge graphs are usually constructed based on entity recognition.Specifically,based on the mining of entity attributes and relationships,domain knowledge graphs can be constructed through knowledge fusion.In this work,the entities and characteristics of power entity recognition are analyzed,the mechanism of entity recognition is clarified,and entity recognition techniques are analyzed in the context of the power domain.Power entity recognition based on the conditional random fields (CRF) and bidirectional long short-term memory (BLSTM) models is investigated,and the two methods are comparatively analyzed.The results indicated that the CRF model,with an accuracy of 83%,can better identify the power entities compared to the BLSTM.The CRF approach can thus be applied to the entity extraction for knowledge graph construction in the power field.
机译:随着人工智能技术在电力行业中的应用,预计知识图表将在电网调度过程中发挥关键作用,智能维护和客户服务响应提供。知识图通常基于实体识别构建。基本上,基于在实体属性和关系的挖掘上,域知识图可以通过知识融合来构建。在这项工作中,分析了功率实体识别的实体和特征,阐明了实体识别的机制,并分析了实体识别技术电源域的上下文。研究了基于条件随机字段(CRF)和双向长期短期存储器(BLSTM)模型的功率实体识别,并且两种方法相对分析。结果表明CRF模型,带有一个精度为83%,与BLSTM相比,可以更好地识别电力实体。因此,CRF方法可以是应用于电源场中知识图形结构的实体提取。

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