基于极性转移检测的情感分类

Shoushan Li, Zhongqing Wang, Sophia Yat-Mei Lee, Chu-Ren Huang
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引用次数: 29

摘要

情感分类是目前自然语言处理领域的一个研究热点,基于词袋的机器学习方法是该领域的最新研究成果。然而,在词袋模型中,有一个重要的现象,称为极性转移,仍然没有得到解决,这有时会使机器学习方法失败。在本研究中,我们的目标是在充分考虑极性转移现象的情况下进行情感分类。首先,我们从一个由极性转移句子组成的语料库中提取了一些检测情感词极性转移的规则。然后,利用检测规则对测试数据中的极性偏移词进行检测。第三,在充分考虑极性移位词的基础上,设计了一种新的基于词计数的分类器。评估表明,新的基于词计数的分类器显著提高了五个领域的情感分析性能。此外,当此分类器与基于机器学习的分类器结合使用时,组合分类器的性能优于它们中的任何一个。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Classification with Polarity Shifting Detection
Sentiment classification is now a hot research issue in the community of natural language processing and the bag-of-words based machine learning approach is the state-of-the-art for this task. However, one important phenomenon, called polarity shifting, remains unsolved in the bag-of-words model, which sometimes makes the machine learning approach fails. In this study, we aim to perform sentiment classification with full consideration of the polarity shifting phenomenon. First, we extract some detection rules for detecting polarity shifting of sentimental words from a corpus which consists of polarity-shifted sentences. Then, we use the detection rules to detect the polarity-shifted words in the testing data. Third, a novel term counting-based classifier is designed by fully considering those polarity-shifted words. Evaluation shows that the novel term counting-based classifier significantly improves the performance of sentiment analysis across five domains. Furthermore, when this classifier is combined with a machine-learning based classifier, the combined classifier yields better performance than either of them.
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