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Truncated Variational Sampling for 'Black Box' Optimization of Generative Models

机译:截断变分抽样用于生成模型的“黑匣子”优化

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We investigate the optimization of two probabilistic generative models with binary latent variables using a novel variational EM approach. The approach distinguishes itself from previous variational approaches by using latent states as variational parameters. Here we use efficient and general purpose sampling procedures to vary the latent states, and investigate the "black box" applicability of the resulting optimization approach. For general purpose applicability, samples are drawn from approximate marginal distributions as well as from the prior distribution of the considered generative model. As such, sampling is defined in a generic form with no analytical derivations required. As a proof of concept, we then apply the novel procedure (A) to Binary Sparse Coding (a model with continuous observables), and (B) to basic Sigmoid Belief Networks (which are models with binary observables). Numerical experiments verify that the investigated approach efficiently as well as effectively increases a variational free energy objective without requiring any additional analytical steps.
机译:我们使用一种新颖的变分EM方法,研究了具有二进制潜在变量的两个概率生成模型的优化。该方法通过使用潜在状态作为变化参数来将自己与以前的变化方法区分开。在这里,我们使用有效的通用采样程序来改变潜伏状态,并研究所得优化方法的“黑匣子”适用性。为了通用,从近似的边际分布以及考虑的生成模型的先验分布中抽取样本。这样,就以通用形式定义了采样,而无需任何分析推导。作为概念的证明,我们然后将新颖的过程(A)应用于二进制稀疏编码(具有连续可观察性的模型),并将(B)应用于基本的Sigmoid信念网络(具有二进制可观察性的模型)。数值实验证明,所研究的方法有效地提高了变分自由能目标,而无需任何额外的分析步骤。

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