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A novel approach for clustering sentiments in Chinese blogs based on graph similarity

机译:基于图相似度的中文博客情感聚类新方法

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摘要

Blog clustering is an important approach for online public opinion analysis. The traditional clustering methods, usually group blogs by keywords, stories and timeline, which usually ignore opinions and emotions expressed in the blog articles. In this paper, an integrated graph-based model for clustering Chinese blogs by embedded sentiments is proposed. A novel graph-based representation and the corresponding clustering algorithm are applied on the Chinese blog search results. The proposed model SoB-graph considers not only sentiment words but also structural information in blogs. Experimental results show that comparing with the traditional graph-based document representation model and vector space document representation model, the proposed SoB-graph model has achieved better performance in clustering sentiments in Chinese blog documents.
机译:博客聚类是在线舆论分析的重要方法。传统的聚类方法通常按关键字,故事和时间轴对博客进行分组,而这些博客通常会忽略博客文章中表达的观点和情感。本文提出了一种基于图的集成模型,通过嵌入情感对中文博客进行聚类。一种新颖的基于图的表示形式和相应的聚类算法被应用于中文博客搜索结果。所提出的模型SoB-graph不仅考虑了情感词,还考虑了博客中的结构信息。实验结果表明,与传统的基于图的文档表示模型和向量空间文档表示模型相比,该SoB-graph模型在中文博客文档的情感聚类中具有较好的表现。

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