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Multiple Emotions Detection in Conversation Transcripts

机译:对话记录中的多重情绪检测

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In this paper, we present a method of predicting emotions from multi-label conversation transcripts. The transcripts are from a movie dialog corpus and annotated partly by 3 annotators. The method includes building an emotion lexicon bootstrapped from Wordnet following the notion of Plutchik's basic emotions and dyads. The lexicon is then adapted to the training data by using a simple Neural Network to fine-tune the weights toward each basic emotion. We then use the adapted lexicon to extract the features and use them for another Deep Network which does the detection of emotions in conversation transcripts. The experiments were conducted to confirm the effectiveness of the method, which turned out to be nearly as good as a human annotator.
机译:在本文中,我们提出了一种从多标签对话记录中预测情绪的方法。笔录来自电影对话语料库,部分由3个注释者进行注释。该方法包括按照Plutchik的基本情绪和二元组的概念,构建一个从Wordnet引导的情绪词典。然后,通过使用简单的神经网络对每个基本情感的权重进行微调,使词典适应训练数据。然后,我们使用改编的词典来提取特征并将其用于另一个深度网络,该深度网络会检测对话记录中的情绪。进行实验以证实该方法的有效性,事实证明该方法几乎与人类注释者一样好。

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