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Emotion Annotation Using Hierarchical Aligned Cluster Analysis

机译:使用分层对齐聚类分析的情感注释

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The correctness of annotation is quite important in supervised learning, especially in electroencephalography(EEG)-based emotion recognition. The conventional EEG annotations for emotion recognition are based on the feedback like questionnaires about emotion elici-tation from subjects. However, these methods are subjective and divorced from experiment data, which lead to inaccurate annotations. In this paper, we pose the problem of annotation optimization as temporal clustering one. We mainly explore two types of clustering algorithms: aligned clustering analysis (ACA) and hierarchical aligned clustering analysis (HACA). We compare the performance of questionnaire-based, ACA-based, HACA-based annotation on a public EEG dataset called SEED. The experimental results demonstrate that our proposed ACA-based and HACA-based annotation achieve an accuracy improvement of 2.59% and 4.53% in average, respectively, which shows their effectiveness for emotion recognition.
机译:注释的正确性在监督学习中非常重要,尤其是在基于脑电图(EEG)的情绪识别中。用于情感识别的常规EEG注释基于反馈,例如有关受试者情感消除的问卷。但是,这些方法是主观的,与实验数据相去甚远,从而导致注释不准确。在本文中,我们将注释优化问题提出为时间聚类之一。我们主要探讨两种类型的聚类算法:对齐聚类分析(ACA)和分层对齐聚类分析(HACA)。我们在称为SEED的公共EEG数据集上比较了基于问卷,基于ACA,基于HACA的注释的性能。实验结果表明,我们提出的基于ACA的注释和基于HACA的注释的平均准确率分别提高了2.59%和4.53%,显示了它们在情感识别方面的有效性。

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