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Coarse-Grained +/-Effect Word Sense Disambiguation for Implicit Sentiment Analysis

机译:内隐情感分析的粗粒+/-效应词义消歧

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摘要

Recent work has addressed opinion inferences that arise when opinions are expressed toward +/-effect events, events that positively or negatively affect entities. Many words have mixtures of senses with different +/-effect labels, and therefore word sense disambiguation is needed to exploit +/-effect information for sentiment analysis. This paper presents a knowledge-based +/-effect coarse-grained sense disambiguation method based on selectional preferences modeled via topic models. The method achieves an overall accuracy of 0.83, which represents a significant improvement over three competitive baselines.
机译:最近的工作已经解决了当对+/-效应事件表达正面或负面影响实体的事件时产生的观点推论。许多单词混合了带有不同+/-效果标签的感官,因此需要单词义消除歧义才能利用+/-效果信息进行情感分析。本文提出了一种基于主题模型建模的选择偏好的基于知识的+/-效果粗粒度感消除歧义方法。该方法的整体精度为0.83,与三个竞争基准相比有了显着提高。

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