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Improving Emotion Recognition Performance by Random-Forest-Based Feature Selection

机译:通过基于随机森林的特征选择提高情绪识别性能

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As technical systems around us aim at a more natural interaction, the task of automatic emotion recognition from speech receives an ever growing attention. One important question still remains unresolved: The definition of the most suitable features across different data types. In the present paper, we employed a random-forest based feature selection known from other research fields in order to select the most important features for three benchmark datasets. Investigating feature selection on the same corpus as well as across corpora, we achieved an increase in performance using only 40 to 60% of the features of the well-known emobase feature set.
机译:随着我们周围的技术系统致力于更自然的互动,语音自动情感识别的任务越来越受到关注。一个重要的问题仍未解决:跨不同数据类型的最合适功能的定义。在本文中,我们采用了其他研究领域已知的基于随机森林的特征选择,以便为三个基准数据集选择最重要的特征。通过研究同一语料库以及整个语料库的特征选择,我们仅使用了众所周知的emobase功能集的40%至60%的特征就实现了性能提升。

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