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Quaternion Convolutional Neural Networks For Theme Identification Of Telephone Conversations

机译:四元数卷积神经网络用于电话对话的主题识别

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Quaternion convolutional neural networks (QCNN) are powerful architectures to learn and model external dependencies that exist between neighbor features of an input vector, and internal latent dependencies within the feature. This paper proposes to evaluate the effectiveness of the QCNN on a realistic theme identification task of spoken telephone conversations between agents and customers from the call center of the Paris transportation system (RATP). We show that QCNNs are more suitable than real-valued CNN to process multidimensional data and to code internal dependencies. Indeed, real-valued CNNs deal with both internal and external relations at the same level since components of an entity are processed independently. Experimental evidence is provided that the proposed QCNN architecture always outperforms real-valued equivalent CNN models in the theme identification task of the DECODA corpus. It is also shown that QCNN accuracy results are the best achieved so far on this task, while reducing by a factor of 4 the number of model parameters.
机译:四元数卷积神经网络(QCNN)是强大的体系结构,用于学习和建模输入向量的相邻特征之间存在的外部依存关系以及该特征内的内部潜在依存关系。本文提议评估QCNN在来自巴黎交通系统(RATP)呼叫中心的座席与客户之间的口头电话对话的现实主题识别任务上的有效性。我们显示,QCNN比实值CNN更适合处理多维数据和编码内部依赖性。实际上,由于实体的组成部分是独立处理的,因此,实值CNN会在同一级别处理内部和外部关系。实验证据表明,在DECODA语料库的主题识别任务中,所提出的QCNN架构总是优于实值的等效CNN模型。还表明,迄今为止,QCNN精度结果是在该任务上获得的最佳结果,同时模型参数数量减少了4倍。

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