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An Improved Method for Web Text Affective Cognition Computing Based on Knowledge Graph

机译:基于知识图的Web文本情感认知计算的改进方法

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The goal of research on the topics such as sentiment analysis and cognition is to analyze the opinions,emotions,evaluations and attitudes that people hold about the entities and their attributes from the text.The word level affective cognition becomes an important topic in sentiment analysis.Extracting the(attribute,opinion word)binary relationship by word segmentation and dependency parsing,and labeling those by existing emotional dictionary combined with webpage information and manual annotation,this paper constitutes a binary relationship knowledge base.By using knowledge embedding method,embedding each element in(attribute,opinion,opinion word)as a word vector into the Knowledge Graph by TransG,and defining an algorithm to distinguish the opinion between the attribute word vector and the opinion word vector.Compared with traditional method,this engine has the advantages of high processing speed and low occupancy,which makes up the time-costing and high calculating complexity in the former methods.
机译:关于情感分析和认知等主题研究的目标是分析人们遵守实体的意见,情感,评估和态度。词语水平情感认知成为情感分析中的一个重要话题。用Word分割和依赖解析提取(属性,意见字)二进制关系,并用现有的情绪字典标记与网页信息和手动注释的标记,本文构成了二进制关系知识库。使用知识嵌入方法,嵌入每个元素在(属性,意见,意见单词)作为单词矢量通过transg中的知识图表,并定义算法以区分属性字矢量与意见单词矢量之间的意见。通过传统方法,该引擎具有优势高处理速度和低占用,这弥补了时间成本和高计算的复杂性前方法。

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