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Context Modelling Using Hierarchical Attention Networks for Sentiment and Self-assessed Emotion Detection in Spoken Narratives

机译:语音叙事中使用分层注意力网络进行情感和自我评估情绪检测的上下文建模

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Automatic detection of sentiment and affect in personal narratives through word usage has the potential to assist in the automated detection of change in psychotherapy. Such a tool could, for instance, provide an efficient, objective measure of the time a person has been in a positive or negative state-of-mind. Towards this goal, we propose and develop a hierarchical attention model for the tasks of sentiment (positive and negative) and self-assessed affect detection in transcripts of personal narratives. We also perform a qualitative analysis of the word attentions learnt by our sentiment analysis model. In a key result, our attention model achieved an un-weighted average recall (UAR) of 91.0 % in a binary sentiment detection task on the test partition of the Ulm State-of-Mind in Speech (USoMS) corpus. We also achieved UARs of 73.7 % and 68.6 % in the 3-class tasks of arousal and valence detection respectively. Finally, our qualitative analysis associates colloquial reinforcements with positive sentiments, and uncertain phrasing with negative sentiments.
机译:通过单词使用自动检测情感和个人叙述中的情感有可能有助于自动检测心理治疗的变化。例如,这种工具可以提供一个有效的,客观的衡量一个人处于积极或消极状态的时间的方法。为了实现这一目标,我们针对个人叙事笔录中的情感(正面和负面)和自我评估的情感检测任务,提出并开发了层次化注意力模型。我们还对我们的情感分析模型所学到的单词注意进行定性分析。在一个关键的结果中,我们的注意力模型在Ulm言语状态(USoMS)语料库的测试分区上的二进制情绪检测任务中实现了91.0%的未加权平均召回率(UAR)。在唤醒和化合价检测的三类任务中,我们还分别实现了73.7%和68.6%的UAR。最后,我们的定性分析将口语增强与积极情绪联系在一起,将不确定的措词与消极情绪联系在一起。

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