Fine-grained Emotion Classification: Class Imbalance Effects on Classifier Performance

Jasy Liew Suet Yan, Howard R. Turtle
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Abstract

We explore a set of machine learning experiments in fine-grained emotion classification to test different proportion of positive and negative samples in the training data with the goal to examine if class imbalance affects classifier performance. The class distribution in a tweet corpus (EmoTweet-28) labelled with 28 emotion categories varies significantly with the largest category (happiness) occurring 11.5% and the smallest category occurring only 0.2%. For each emotion category, there are far more negative examples than positive examples. Unlike conventional wisdom, downsampling the data in our skewed corpus did not improve classifier performance. However, we found that increasing the negative examples in the training data leads to lower recall but higher precision. Demonstrating how the ratio of positive and negative examples in the training data affect the performance of emotion classifiers is the main contribution of this study.
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细粒度情绪分类:类别不平衡对分类器性能的影响
我们探索了一组细粒度情绪分类的机器学习实验,以测试训练数据中不同比例的正样本和负样本,目的是检验类别不平衡是否会影响分类器的性能。在tweet语料库(EmoTweet-28)中,标记有28种情绪类别的类别分布差异很大,最大类别(快乐)占11.5%,最小类别仅占0.2%。对于每一种情绪类别,消极的例子远远多于积极的例子。与传统智慧不同,在倾斜语料库中对数据进行降采样并没有提高分类器的性能。然而,我们发现在训练数据中增加负例会导致召回率降低,但准确率提高。本研究的主要贡献是展示了训练数据中积极和消极例子的比例如何影响情绪分类器的性能。
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