Semi-Supervised Method for Multi-category Emotion Recognition in Tweets

Valentina Sintsova, C. Musat, P. Pu
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引用次数: 9

Abstract

Each tweet is limited to 140 characters. This constraint surprisingly makes Twitter a more spontaneous platform to express our emotions. Detecting emotions and correctly classifying them automatically is an increasingly important task if we want to understand how large groups of people feel about an event or relevant topic. However, constructing supervised classifiers can be a daunting task because of the high manual annotation costs. We propose constructing emotion classifiers with a minimal amount of initial knowledge (e.g. A general-purpose emotion lexicon) and using a semi-supervised learning method to extend it to correctly detect more emotional tweets within a specific domain. Additionally, we show that our algorithm, Balanced Weighted Voting (or BWV) is able to overcome the imbalanced distribution of emotions in the initial labeled data. Our validation experiments show that BWV improves the performance of three initial classifiers, at least in the specific domain of sports. Furthermore, its comparison with other two learning strategies reveals its superiority in terms of macro F1-score, as well as more stable performance among different emotion categories.
推文多类别情感识别的半监督方法
每条推文限制在140个字符以内。令人惊讶的是,这种约束使Twitter成为一个更自然的表达我们情感的平台。如果我们想了解一大群人对一个事件或相关话题的感受,检测情绪并自动正确地对它们进行分类是一项越来越重要的任务。然而,构造监督分类器可能是一项艰巨的任务,因为手工注释的成本很高。我们建议用最少的初始知识(例如通用情感词典)构建情感分类器,并使用半监督学习方法对其进行扩展,以正确检测特定领域内更多的情感推文。此外,我们证明了我们的算法,平衡加权投票(或BWV)能够克服初始标记数据中情绪分布的不平衡。我们的验证实验表明,至少在特定的体育领域,BWV提高了三个初始分类器的性能。通过与其他两种学习策略的比较,发现其在宏观f1得分上具有优势,在不同情绪类别上的表现更为稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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