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Multi-class sentiment analysis on twitter: Classification performance and challenges

机译:Twitter上的多类别情感分析:分类性能和挑战

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摘要

Sentiment analysis refers to the automatic collection, aggregation, and classification of data collected online into different emotion classes. While most of the work related to sentiment analysis of texts focuses on the binary and ternary classification of these data, the task of multi-class classification has received less attention. Multi-class classification has always been a challenging task given the complexity of natural languages and the difficulty of understanding and mathematically "quantifying" how humans express their feelings. In this paper, we study the task of multi-class classification of online posts of Twitter users, and show how far it is possible to go with the classification, and the limitations and difficulties of this task. The proposed approach of multi-class classification achieves an accuracy of 60.2% for 7 different sentiment classes which, compared to an accuracy of 81.3% for binary classification, emphasizes the effect of having multiple classes on the classification performance. Nonetheless, we propose a novel model to represent the different sentiments and show how this model helps to understand how sentiments are related. The model is then used to analyze the challenges that multi-class classification presents and to highlight possible future enhancements to multi-class classification accuracy.
机译:情感分析是指将在线收集的数据自动收集,汇总和分类为不同的情感类别。尽管与文本情感分析有关的大多数工作都集中在这些数据的二进制和三进制分类上,但多类分类的任务却很少受到关注。鉴于自然语言的复杂性以及理解和数学“量化”人类表达情感的难度,多类分类一直是一项艰巨的任务。在本文中,我们研究了Twitter用户在线帖子的多类别分类任务,并显示了分类可能进行的程度,以及该任务的局限性和难点。所提出的多类别分类方法针对7个不同的情感类别实现了60.2%的准确度,相比之下,针对二元分类的准确度为81.3%,强调了拥有多个类别对分类性能的影响。尽管如此,我们提出了一个新颖的模型来代表不同的情感,并展示了该模型如何帮助理解情感之间的关系。然后,该模型将用于分析多类分类所面临的挑战,并突出显示将来可能对多类分类准确性进行的增强。

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