Affective-cognitive dialogue act detection in an error-aware spoken dialogue system

Wei-Bin Liang, Chung-Hsien Wu, Meng-Hsiu Sheng
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引用次数: 2

Abstract

This paper presents an approach to affective-cognitive dialogue act detection in a spoken dialogue. To achieve this goal, the input utterance is decoded as the affective state by an emotion recognizer and a word sequence by an imperfect speech recognizer separately. Besides, four types of evidences are employed to grade the score of each recognized word. The recognized word sequence is used to derive the candidate sentences to alleviate the problem of unexpected language usage for the cognitive state predicted by the vector space-based dialogue act detection. The Boltzmann selection based method is then employed to predict the next possible act in the spoken dialogue system according to the affective-cognitive states. A model of affective anticipatory reward that is assumed to arise from the emotional seeking system is adopted for enhancing the efficacy of dialogue act detection. Finally, the evaluation data are collected and the experimental results confirm the improved performance of the proposed approach compared to the baseline system on the task completion rate.
错误感知口语对话系统中的情感-认知对话行为检测
本文提出了一种基于情感认知的口语对话行为检测方法。为了实现这一目标,输入的话语分别被情感识别器解码为情感状态,被不完善的语音识别器解码为单词序列。此外,采用四种类型的证据对每个识别词的得分进行评分。在基于向量空间的对话行为检测预测认知状态时,利用识别出的词序列派生出候选句子,以缓解语言使用意外的问题。然后,根据情感认知状态,采用基于玻尔兹曼选择的方法预测口语对话系统中下一个可能的行为。为了提高对话行为检测的有效性,采用了一种假设产生于情感寻求系统的情感预期奖励模型。最后,收集了评估数据,实验结果证实了该方法在任务完成率方面比基线系统有了改进。
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