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A Tutorial on Stochastic Approximation Algorithms for Training Restricted Boltzmann Machines and Deep Belief Nets

机译:用于训练受限制的Boltzmann机器和深度信仰网的随机近似算法的教程

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In this study, we provide a direct comparison of the Stochastic Maximum Likelihood algorithm and Contrastive Divergence for training Restricted Boltzmann Machines using the MNIST data set. We demonstrate that Stochastic Maximum Likelihood is superior when using the Restricted Boltzmann Machine as a classifier, and that the algorithm can be greatly improved using the technique of iterate averaging from the field of stochastic approximation. We further show that training with optimal parameters for classification does not necessarily lead to optimal results when Restricted Boltzmann Machines are stacked to form a Deep Belief Network. In our experiments we observe that fine tuning a Deep Belief Network significantly changes the distribution of the latent data, even though the parameter changes are negligible.
机译:在这项研究中,我们使用MNIST数据集提供随机最大似然算法的直接比较训练受限制的Boltzmann机器的对比发散。我们表明,当使用受限制的Boltzmann机器作为分类器时,随机最大可能性是优越的,并且使用从随机近似领域的迭代实行技术,可以大大提高算法。我们进一步表明,当限制的Boltzmann机器堆叠以形成深度信仰网络时,具有最佳参数的培训并不一定导致最佳结果。在我们的实验中,我们观察到,即使参数的变化可以忽略不计,我们会观察到深度的调整,深度信仰网络显着改变了潜在数据的分布。

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