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A Method based on Generation Models for Analyzing Sentiment-Topic in Texts

机译:一种基于生成模型的方法,用于分析文本中情绪主题的方法

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This paper proposes a method based on generation model for sentiment analysis and topic identification in texts. Firstly sentiment and topic of training texts are labeled by hand and sentiment models and topic models are established. Secondly Compute the Kullback-Leibler divergence between a testing text and sentiment models in order to determine sentiment of the text. Similarly, calculate the Kullback-Leibler divergence between the testing text and topic model, so the topic of text can be identified. The unigram and bigram of words are employed as the model parameters, and correspondingly maximum likelihood estimation and some smoothing techniques are used to estimate these parameters. Empirical experiments on product reviews corpus show that this language modeling approach performs better than SVM and obtains improvement on precision. Moreover this method is better than SVM in robustness.
机译:本文提出了一种基于文本情绪分析和主题识别的生成模型的方法。首先,培训文本的情绪和主题是用手工标记的,并建立了情绪模型和主题模型。其次,计算测试文本和情绪模型之间的kullback-leibler发散,以便确定文本的情绪。同样,计算测试文本和主题模型之间的kullback-leibler分歧,因此可以识别文本主题。 Unigram和Bigram的单词被用作模型参数,并且相应的最大似然估计和一些平滑技术用于估计这些参数。产品评论的实证实验表明,这种语言建模方法比SVM更好,并获得精度的改进。此外,这种方法鲁棒性优于SVM。

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