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Sentiment Classification and Polarity Shifting

机译:情绪分类和极性转移

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摘要

Polarity shifting marked by various linguistic structures has been a challenge to automatic sentiment classification. In this paper, we propose a machine learning approach to incorporate polarity shifting information into a document-level sentiment classification system. First, a feature selection method is adopted to automatically generate the training data for a binary classifier on polarity shifting detection of sentences. Then, by using the obtained binary classifier, each document in the original polarity classification training data is split into two partitions, polarity-shifted and polarity-unshifted, which are used to train two base classifiers respectively for further classifier combination. The experimental results across four different domains demonstrate the effectiveness of our approach.
机译:以各种语言结构为标志的极性转移一直是对自动情感分类的挑战。在本文中,我们提出了一种机器学习方法,将极性转换信息合并到文档级情感分类系统中。首先,采用特征选择方法为句子的极性移位检测自动生成用于二分类器的训练数据。然后,通过使用获得的二进制分类器,将原始极性分类训练数据中的每个文档分为两部分,即极性移位和极性未移位,分别用于训练两个基本分类器以进行进一步的分类器组合。在四个不同领域的实验结果证明了我们方法的有效性。

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