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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE/ACM Transactions on >Real to H-Space Autoencoders for Theme Identification in Telephone Conversations
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Real to H-Space Autoencoders for Theme Identification in Telephone Conversations

机译:Real到H-Space AutoEncoders,用于电话对话中的主题识别

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摘要

Machine learning (ML) and deep learning with deep neural networks (DNN), have drastically improved the performances of modern systems on numerous spoken language understanding (SLU) related tasks. Since most of current researches focus on new neural architectures to enhance the performances in realistic conditions, few recent works investigated the use of different algebras with neural networks (NN), to better represent the nature of the data being processed. To this extent, quaternion-valued neural networks (QNN) have shown better performances, and an important reduction of the number of neural parameters compared to traditional real-valued neural networks, when dealing with multidimensional signal. Nonetheless, the use of QNNs is strictly limited to quaternion input or output features. This article introduces a new unsupervised method based on a hybrid autoencoder (AE) called real-to-quaternion autoencoder (R2H), to extract a quaternion-valued input signal from any real-valued data, to be processed by QNNs. The experiments performed to identify the most related theme of a given telephone conversation from a customer care service (CCS), demonstrate that the R2H approach outperforms all the previously established models, either real- or quaternion-valued ones, in term of accuracy and with up to four times fewer neural parameters.
机译:利用深度神经网络(DNN)的机器学习(ML)和深度学习,大大提高了现代系统对多种口语理解(SLU)相关任务的性能。由于目前大多数研究专注于新的神经架构,以提高现实条件的性能,最近的几项作品研究了使用不同代数与神经网络(NN)的使用,更好地代表正在处理的数据的性质。在这种程度上,在处理多维信号时,与传统的真实的神经网络相比,四元值估值的神经网络(QNN)表现出更好的性能,以及神经参数的数量的重要降低。尽管如此,QNN的使用严格限于四元数输入或输出功能。本文介绍了一种基于混合AutoEncoder(AE)的新的无监督方法,称为实际对四元数AutoEncoder(R2H),以通过QNN地处理来自任何实际值的数据的四元数值输入信号。从客户关怀服务(CCS)中识别给定电话交谈的最相关主题的实验表明,R2H接近的绩效胜过了所有先前建立的模型,无论是真实的还是四元值值,都可以在准确性和中神经参数少了四倍。

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