基于内容扩展卷积神经网络的中文微博情感分类

Xiao Sun, Fei Gao, Chengcheng Li, F. Ren
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引用次数: 9

摘要

中国微博情感分析的相关研究旨在分析海报的情感。本文提出了一种内容扩展方法,将微博帖子及其评论结合到微博会话中进行情感分析。提出了一种新的卷积自编码器,可以从微博帖子的会话中提取上下文情感信息。在此基础上,实现了一种由多层受限玻尔兹曼机(Restricted Boltzmann Machine, RBM)叠加而成的DBN模型,用于文章短文本的高级特征提取。这些RBM层可以对观察到的短文本进行编码器,以学习隐藏的结构或语义信息,以便更好地表示特征。一个ClassRBM (Classification RBM)层,堆叠在RBM层之上,用于实现最终的情感分类。实验结果表明,在适当的结构和参数下,所提出的深度学习方法在情感分类上的性能优于当前最先进的表面学习模型(如SVM或NB),这也证明了DBN适用于使用所提出的特征维数扩展方法进行短长度文档分类。
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Chinese microblog sentiment classification based on convolution neural network with content extension method
Related research for sentiment analysis on Chinese microblog is aiming at analyzing the emotion of posters. This paper presents a content extension method that combines post with its' comments into a microblog conversation for sentiment analysis. A new convolutional auto encoder which can extract contextual sentiment information from microblog conversation of the post is proposed. Furthermore, a DBN model, which is composed by several layers of RBM(Restricted Boltzmann Machine) stacked together, is implemented to extract some higher level feature for short text of a post. These RBM layers can encoder observed short text to learn hidden structures or semantics information for better feature representation. A ClassRBM (Classification RBM) layer, which is stacked on top of RBM layers, is adapted to achieve the final sentiment classification. The experiment results demonstrate that, with proper structure and parameter, the performance of the proposed deep learning method on sentiment classification is better than state-of-the-art surface learning models such as SVM or NB, which also proves that DBN is suitable for short-length document classification with the proposed feature dimensionality extension method.
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