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Real-Life Emotion Representation and Detection in Call Centers Data

机译:呼叫中心数据中的真实情感表示和检测

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摘要

Since the early studies of human behavior, emotions have attracted the interest of researchers in Neuroscience and Psychology. Recently, it has been a growing field of research in computer science. We are exploring how to represent and automatically detect a subject's emotional state. In contrast with most previous studies conducted on artificial data, this paper addresses some of the challenges faced when studying real-life non-basic emotions. Real-life spoken dialogs from call-center services have revealed the presence of many blended emotions. A soft emotion vector is used to represent emotion mixtures. This representation enables to obtain a much more reliable annotation and to select the part of the corpus without conflictual blended emotions for training models. A correct detection rate of about 80% is obtained between Negative and Neutral emotions and between Fear and Neutral emotions using paralin-guistic cues on a corpus of 20 hours of recording.
机译:自从对人类行为的早期研究以来,情绪已经引起了神经科学和心理学研究人员的兴趣。最近,它已经成为计算机科学领域中一个不断发展的研究领域。我们正在探索如何表现和自动检测对象的情绪状态。与以前对人工数据进行的大多数研究相比,本文解决了研究现实生活中的非基本情感时面临的一些挑战。呼叫中心服务的真实语音对话显示了许多混合情绪的存在。柔和的情绪向量用于表示情绪混合。这种表示能够获得更可靠的注释,并选择语料库中没有冲突混合情感的部分进行训练。使用20小时记录语料库中的旁白语言提示,可以在负情绪和中性情绪之间以及在恐惧和中性情绪之间获得大约80%的正确检测率。

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