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Tackling the Problem of Class Imbalance in Multi-class Sentiment Classification: An Experimental Study

机译:解决多类情感分类中的类不平衡问题的实验研究

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Sentiment classification is an important task which gained extensive attention both in academia and in industry. Many issues related to this task such as handling of negation or of sarcastic utterances were analyzed and accordingly addressed in previous works. However, the issue of class imbalance which often compromises the prediction capabilities of learning algorithms was scarcely studied. In this work, we aim to bridge the gap between imbalanced learning and sentiment analysis. An experimental study including twelve imbalanced learning preprocessing methods, four feature representations, and a dozen of datasets, is carried out in order to analyze the usefulness of imbalanced learning methods for sentiment classification. Moreover, the data difficulty factors — commonly studied in imbalanced learning — are investigated on sentiment corpora to evaluate the impact of class imbalance.
机译:情感分类是一项重要的任务,在学术界和工业界均受到广泛关注。与这项任务相关的许多问题,例如否定或讽刺话语的处理,都经过了分析,并在先前的工作中得到了解决。然而,很少研究经常损害学习算法的预测能力的班级不平衡问题。在这项工作中,我们旨在弥合学习不平衡与情绪分析之间的差距。为了分析不平衡学习方法对情感分类的有用性,进行了包括十二种不平衡学习预处理方法,四个特征表示和十二个数据集的实验研究。此外,通常在不平衡学习中研究的数据困难因素在情感语料上进行了研究,以评估班级不平衡的影响。

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