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Word sentiment polarity disambiguition based on opinion level context

机译:基于观点层次语境的词情感极性消歧

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Many opinion keywords carry different polarities when they are used in different contexts, posing huge challenges to opinion mining research. To address the word sentiment polarity disambiguation (WSPD) task, the opinion level context information is studies in this paper, and an effective method is designed to make good use of the context information to resolve the sentiment polarity ambiguity. Different from the traditional way that considers surrounding n-grams, we specially consider the associated opinion target, modifying constituents and conjunctions as context of a given sentiment keyword. To locate the context information precisely, we make use of dependency relation between words. We then devise a statistical equation to calculate probability that the given keyword carries certain sentiment polarity. Preliminary results show that the method yields encouraging accuracy.
机译:在不同的上下文中使用时,许多意见关键字具有不同的极性,这对意见挖掘研究提出了巨大的挑战。为了解决词的情感极性消歧(WSPD)任务,本文研究了意见层面的上下文信息,设计了一种有效的方法来利用上下文信息来解决情感极性的歧义。与考虑周围n-gram的传统方式不同,我们特别考虑关联的意见目标,将组成部分和连词修改为给定情感关键字的上下文。为了精确定位上下文信息,我们利用单词之间的依赖关系。然后,我们设计一个统计方程来计算给定关键字带有某些情感极性的概率。初步结果表明,该方法产生了令人鼓舞的准确性。

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