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首页> 外文期刊>Journal of machine learning research >Online but Accurate Inference for Latent Variable Models with Local Gibbs Sampling
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Online but Accurate Inference for Latent Variable Models with Local Gibbs Sampling

机译:具有局部吉布斯采样的潜在变量模型的在线但精确推断

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摘要

We study parameter inference in large-scale latent variable models. We first propose a unified treatment of online inference for latent variable models from a non-canonical exponential family, and draw explicit links between several previously proposed frequentist or Bayesian methods. We then propose a novel inference method for the frequentist estimation of parameters, that adapts MCMC methods to online inference of latent variable models with the proper use of local Gibbs sampling. Then, for latent Dirichlet allocation,we provide an extensive set of experiments and comparisons with existing work, where our new approach outperforms all previously proposed methods. In particular, using Gibbs sampling for latent variable inference is superior to variational inference in terms of test log-likelihoods. Moreover, Bayesian inference through variational methods perform poorly, sometimes leading to worse fits with latent variables of higher dimensionality.
机译:我们研究大型潜在变量模型中的参数推断。我们首先为非经典指数族的潜在变量模型提出统一的在线推论方法,并在先前提出的几种频繁论者或贝叶斯方法之间建立明确的联系。然后,我们提出了一种用于参数频繁估计的新颖推理方法,该方法通过适当使用局部Gibbs采样使MCMC方法适应于潜在变量模型的在线推理。然后,对于潜在的Dirichlet分配,我们提供了广泛的实验和与现有工作的比较,其中我们的新方法优于以前提出的所有方法。特别是,就测试对数似然而言,使用Gibbs采样进行潜在变量推断要优于变分推断。此外,通过变分方法进行贝叶斯推理的效果不佳,有时会导致与高维隐变量的拟合度变差。

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