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An Unsupervised Snippet-based Sentiment Classification Method for Chinese Unknown Phrases without using Reference Word Pairs

机译:一种无监督的基于片段的情绪分类方法,用于中国未知短语而不使用参考词对

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This work presents an unsupervised snippet-based sentiment classification method for Chinese unknown sentiment phrases, which is also applicable to other languages theoretically. Unlike existing Semantic Orientation (SO) methods, our proposed method does not require any Reference Word Pairs (RWPs) for predicting the sentiments of phrases. The results of preliminary experiments show that our proposed method is highly effective and achieves over 80% accuracy and F-measures with relatively fewer queries. An experiment of opinion extraction using a public Chinese UGC corpus also shows promising results.
机译:这项工作提出了一种无监督的基于片段的情节情绪分类方法,用于中国未知的情绪短语,其理论上也适用于其他语言。与现有的语义定向(SO)方法不同,我们所提出的方法不需要任何参考词对(RWP)来预测短语的情绪。初步实验的结果表明,我们的提出方法非常有效,达到80%的准确性和F法,具有相对较少的疑问。使用公共中国UGC语料库的意见提取实验也显示出有希望的结果。

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