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Classifying semantic orientation of domain-dependent words with unknown sentiments

机译:未知情感的领域相关词的语义取向分类

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Interpretation of semantic orientation of a word depends on the domain topic it describes. Based on Semantic Orientation Pointwise Mutual Information (SO-PMI), we propose a framework for prediction of semantic orientations of words with respect to a domain topic. The framework exploits the number of hits obtained from an available search engine for calculating the SO-PMI value of a given pair of a domain topic and a word with unknown sentiment. For improvement of prediction accuracy, the framework adjusts SO-PMI values by employment of tuning parameters, which are learnt automatically from training data. The framework is evaluated on two different domain topics and the overall accuracy in the range of 66%–78% is obtained.
机译:单词的语义取向的解释取决于它所描述的领域主题。基于语义定向逐点互信息(SO-PMI),我们提出了一个框架来预测单词相对于领域主题的语义定向。该框架利用了从可用搜索引擎获得的匹配数,以计算给定的一对领域主题和情绪未知的单词的SO-PMI值。为了提高预测准确性,该框架通过使用调整参数来调整SO-PMI值,这些参数是从训练数据中自动获悉的。该框架在两个不同的领域主题上进行了评估,总体准确性在66%–78%范围内。

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