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An Ensemble-Classifier Based Approach for Multiclass Emotion Classification of Short Text

机译:基于集成分类器的短文本多情感分类方法

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The profusion of social media textual content coupled with emotion mining methodologies, present exciting opportunities for researches to unveil the hidden emotions behind these texts. Despite recent growth and development in the field of Textual Emotion Mining (TEM), previous studies of emotion classification mainly focused on the use of simple classifiers over Ekman (6 emotions) or Plutchik (8 emotions) emotion models. In this study, Parrott's hierarchy of emotion is utilized to build three emotion-labelled datasets of tweets corresponding to three levels(primary, secondary and tertiary) of emotion categories. We then present an ensemble-classifier based approach for multiclass textual emotion classification problem. The ensemble was created using four diverse classifiers including naive bayes, multiclass SVM, logistic regression and SGDunder three algorithms bagging, boosting and voting, in order to constitute a promising model which combines the benefits of base classifiers. The experimental investigation over three crawled datasets of hashtag-annotated english tweets, showed promising results and indicated that the proposed ensemble-classifier based approach improved the performance of base learners. Also, voting proved to be most suitable and outperformed both bagging and boosting ensembles.
机译:社交媒体文本内容的泛滥加上情感挖掘方法,为研究揭示这些文本背后的隐藏情感提供了令人兴奋的机会。尽管最近在文本情感挖掘(TEM)领域取得了增长和发展,但以前的情感分类研究主要集中在对Ekman(6个情感)或Plutchik(8个情感)情感模型的简单分类器的使用上。在这项研究中,帕罗特的情感等级被用来构建三个带有情感标签的推文数据集,这些数据集对应于情感类别的三个级别(主要,次要和第三级)。然后,我们针对多类文本情感分类问题提出了一种基于整体分类器的方法。该集合是使用四种不同的分类器(包括朴素贝叶斯,多类支持向量机,逻辑回归和SGD)在袋装,提升和投票这三种算法下创建的,从而构成了一个有希望的模型,该模型结合了基本分类器的优势。对带有标签标记的英语推文的三个爬网数据集进行的实验研究显示出令人鼓舞的结果,并表明基于集成分类器的方法提高了基础学习者的性能。而且,事实证明,投票是最合适的,并且胜过袋装和鼓舞团体。

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