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Cooperative Learning of Energy-Based Model and Latent Variable Model via MCMC Teaching

机译:通过MCMC教学的能源 - 基于模型和潜变模型的合作学习

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摘要

This paper proposes a cooperative learning algorithm to train both the undirected energy-based model and the directed latent variable model jointly. The learning algorithm interweaves the maximum likelihood algorithms for learning the two models, and each iteration consists of the following two steps: (1) Modified contrastive divergence for energy-based model: The learning of the energy-based model is based on the contrastive divergence, but the finite-step MCMC sampling of the model is initialized from the synthesized examples generated by the latent variable model instead of being initialized from the observed examples. (2) MCMC teaching of the latent variable model: The learning of the latent variable model is based on how the MCMC in (1) changes the initial synthesized examples generated by the latent variable model, where the latent variables that generate the initial synthesized examples are known so that the learning is essentially supervised. Our experiments show that the cooperative learning algorithm can learn realistic models of images.
机译:本文提出了一种合作学习算法,用于共同培训无向能源的模型和定向潜变量模型。学习算法适于学习两种模型的最大似然算法,并且每个迭代包括以下两个步骤:(1)基于能量的模型的修改对比分解:基于能量的模型的学习是基于对比分歧但是,从潜在变量模型生成的合成示例初始化模型的有限步骤MCMC采样,而不是从观察到的示例初始化。 (2)潜在变量模型的MCMC教学:潜在变量模型的学习是基于(1)中的MCMC如何改变潜在变量模型生成的初始合成示例,其中生成初始合成示例的潜在变量众所周知,学习基本上是监督的。我们的实验表明,合作学习算法可以学习逼真的图像模型。

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