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Hermitian-Based Hidden Activation Functions for Adaptation of Hybrid HMM/ANN Models

机译:基于Hermitian的隐藏激活功能,用于适应混合HMM / ANN型号

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This work is.concerned with speaker adaptation techniques for artificial neural network (ANN) implemented as feed-forward multi-layer perceptrons (MLPs) in the context of large vocabulary continuous speech recognition (LVCSR). Most successful speaker adaptation techniques for MLPs consist of augmenting the neural architecture with a linear transformation network connected to either the input or the output layer. The weights of this additional linear layer are learned during the adaptation phase while all of the other weights are kept frozen in order to avoid over-fitting. In doing so, the structure of the speakerdependent (SD) and speaker-independent (SI) architecture differs and the number of adaptation parameters depends upon the dimension of either the input or output layers. We propose an alternative neural architecture for speaker-adaptation to overcome the limits of current approaches. This neural architecture adopts hidden activation functions that can be learned directly from the adaptation data. This adaptive capability of the hidden activation function is achieved through the use of orthonormal Hermite polynomials. Experimental evidence gathered on the Wall Street Journal Nov92 task demonstrates the viability of the proposed technique.
机译:这项工作是在大词汇表连续语音识别(LVCSR)的上下文中实现为人工神经网络(ANN)的扬声器适配技术作为前馈多层Perceptrons(MLP)。 MLP的最成功的扬声器适配技术包括使用连接到输入或输出层的线性变换网络增强神经架构。在适应阶段期间学习该附加线性层的重量,同时所有其他重物保持冷冻以避免过度拟接。在这样做时,扬声器竞争(SD)和独立于扬声器的(SI)架构的结构不同,并且适应参数的数量取决于输入或输出层的维度。我们提出了一种替代神经结构,用于扬声器适应以克服当前方法的限制。这种神经结构采用隐藏的激活功能,可以直接从适应数据学习。隐藏激活功能的这种自适应能力是通过使用正交性Hermite多项式来实现的。在华尔街日志中聚集的实验证据11192任务展示了所提出的技术的可行性。

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