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Bias-Sentiment-Topicmodel for microblog sentiment analysis

机译:偏爱情绪主题模型用于微博情感分析

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摘要

Unified models of sentiment and topic have been widely employed in unsupervised sentiment analysis, where each word in text carries both sentiment and topic information. In fact, however, some words tend to express objective things while others prefer to express subjective sentiments. Based on this observation, the concept ofword bias is put forward firstly, including objective bias and subjective bias. Considering the relations of bias, sentiment, and topic, a unified framework named Bias-Sentiment-Topic (BST) model is then presented to jointly model them for microblog sentiment analysis. After that, an improved Gibbs sampler is proposed for the inference of BST by introducing the general Pólya urn model, which incorporates word embedding as the general knowledge. Finally, experiments on standard test datasets illustrate major improvements of BST in sentiment classification and its effectiveness in separation of words with different biases.
机译:情感和主题的统一模型已广泛用于无监督的情感分析中,其中文本中的每个单词都包含情感和主题信息。然而,实际上,有些词倾向于表达客观事物,而另一些词倾向于表达主观情感。在此基础上,首先提出了词汇偏向的概念,包括客观偏向和主观偏向。考虑到偏见,情感和主题的关系,提出了一个名为Bias-Sentiment-Topic(BST)模型的统一框架,以对它们进行联合建模以进行微博情感分析。之后,通过引入一般的Pólyaurn模型,提出了一种改进的Gibbs采样器,用于BST的推理,该模型将词嵌入作为常识。最后,在标准测试数据集上进行的实验说明了BST在情感分类方面的重大改进及其在分离具有不同偏见的单词方面的有效性。

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