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MODELING SPEECH PERCEPTION WITH RESTRICTED BOLTZMANN MACHINES

机译:用限制的Boltzmann机器建模语音感知

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Restricted Boltzmann Machines (RBMs) appear to be a good candidate to model information processing in the cerebral cortex, since they employ a simple unsupervised learning rule that can be applied to many domains and allows the training of multiple layers of representation. In this paper, we apply the RBM learning algorithm to speech perception. We show that RBMs can be used to achieve good performance in the recognition of isolated spoken digits using a multi-layer deep belief network (consisting of a number of stacked RBMs). This performance, however, appears to depend on the fine-tuning of weights with the supervised back-propagation algorithm. To investigate how central the role of back-propagation, we compare the performance of a number of deep-belief networks using fine-tuning with the performance of the same network architectures without fine-tuning. Furthermore, since one of the main strengths of RBMs is to build up multiple layers of representation, we combine the question of fine-tuning with the question of how beneficial additional layers are for the performance of the networks. To see whether the representations that emerge on higher levels make classification easier, we also apply a simple perception classification to the different levels of the deep-belief networks when it is trained without fine-tuning.
机译:受限制的Boltzmann机器(RBMS)似乎是在大脑皮层中模拟信息处理的良好候选者,因为它们采用了可以应用于许多域的简单无监督的学习规则,并允许训练多个表示的表示。在本文中,我们将RBM学习算法应用于语音感知。我们表明RBMS可用于使用多层深度信仰网络(由多个堆积的RBMS组成)识别孤立的口语数字的良好性能。但是,这种性能似乎取决于具有监督的反向传播算法的权重的微调。为了调查核心的核心的作用,我们使用微调与同一网络架构的性能进行微调,比较了许多深度信仰网络的性能,而无需微调。此外,由于RBMS的主要优势之一是建立多层表示,因此我们将微调问题与有益的附加层如何用于网络性能的问题相结合。要了解更高级别的表示是否使分类更容易,我们还将简单的感知分类应用于在没有微调的情况下培训时对深度信仰网络的不同级别。

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