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MINING CALL CENTER CONVERSATIONS EXHIBITING SIMILAR AFFECTIVE STATES

机译:采矿呼叫中心对话表现出类似的情感状态

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Automatic detection and identifying emotions in large call center calls are essential to spot conversations that require further action. Most often statistical models generated using annotated emotional speech are used to design an emotion detection system. But annotation requires substantial amount of human intervention and cost; and may not be available for call center calls because of the infrastructure issues. Therefore detection systems use models that are generated form the readily available annotated emotional (clean) speech datasets and produce erroneous output due to mismatch in training-testing datasets. Here we propose a framework to automatically identify the similar affective spoken utterances in large number of call center calls by using the emotion models that are trained with the freely available acted emotional speech. Further, to reliably detect the emotional content, we incorporate the available knowledge associated with the call (time lapse of the utterances in a call, the contextual information derived from the linguistic contents, and speaker information). For each audio utterance, the emotion recognition system generates similarity measures (likelihood scores) in arousal and valence dimension using pre-trained emotional models, and further they are combined with the scores from the contextual knowledge-based systems, which are used to reliably detect the similar affective contents in large number of calls. Experiments demonstrate that there is a significant improvement in detection accuracy when the knowledge-based framework is used.
机译:在大呼叫中心调用中自动检测和识别情绪对于发现需要进一步行动的对话至关重要。使用使用注释的情绪语音产生的大多数统计模型用于设计情绪检测系统。但注释需要大量的人为干预和成本;由于基础设施问题,可能无法用于呼叫中心呼叫。因此,检测系统使用生成的模型,该模型形成了易于获得的注释的情感(清洁)语音数据集,并由于培训测试数据集中的不匹配而产生错误的输出。在这里,我们提出了一个框架,通过使用通过自由可用的情绪言论训练的情感模型来自动识别大量呼叫中心呼叫中的类似情感口语话语。此外,为了可靠地检测情绪内容,我们纳入了与呼叫相关联的可用知识(呼叫中的话语时间流逝,从语言内容派生的上下文信息和扬声器信息)。对于每个音频话语,情绪识别系统使用预先训练的情绪模型产生唤醒和价维中的相似度测量(似然分数),并进一步与基于语境知识的系统的分数相结合,其用于可靠地检测大量呼叫中的类似情感内容。实验表明,当使用基于知识的框架时,检测准确性的显着提高。

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