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Two-Stage Fine-Grained Text-Level Sentiment Analysis Based on Syntactic Rule Matching and Deep Semantic

机译:基于句法规则匹配和深度语义的两级细粒度文本级别情绪分析

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Aiming at the problem that traditional text-level sentiment analysis methods usually ignore the emotional tendency corresponding to the object or attribute. In this paper, a novel two-stage fine-grained text-level sentiment analysis model based on syntactic rule matching and deep semantics is proposed. Based on analyzing the characteristics and difficulties of fine-grained sentiment analysis, a two-stage fine-grained sentiment analysis algorithm framework is constructed. In the first stage, the objects and its corresponding opinions are extracted based on syntactic rules matching to obtain preliminary objects and opinions. The second stage based on deep semantic network to extract more accurate objects and opinions. Aiming at the problem that the extraction result contains multiple objects and opinions to be matched, an object-opinion matching algorithm based on the minimum lexical separation distance is proposed to achieve accurate pairwise matching. Finally, the proposed algorithm is evaluated on several public datasets to demonstrate its practicality and effectiveness.
机译:针对传统的文本级感分析方法通常忽略对象或属性对应的情绪倾向的问题。本文提出了一种基于句法规则匹配和深层语义的新型两阶段细粒度文本级感分析模型。基于分析细粒情绪分析的特性和困难,构建了一种两级细粒度情绪分析算法框架。在第一阶段,基于识别规则匹配以获得初步对象和意见的句法规则来提取对象及其相应的意见。基于深度语义网络的第二阶段提取更准确的对象和意见。针对提取结果包含多个对象和意见的问题,提出了一种基于最小词汇分离距离的对象匹配算法,以实现精确的成对匹配。最后,在几个公共数据集上评估了所提出的算法,以展示其实用性和有效性。

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