Variational inference is an optimization-based method for approximating the posterior distribution of the parameters in Bayesian probabilistic models. A key challenge of variational inference is to approximate the posterior with a distribution that is computationally tractable yet sufficiently expressive. We propose a novel method for generating samples from a highly flexible variational approximation. The method starts with a coarse initial approximation and generates samples by refining it in selected, local regions. This allows the samples to capture dependencies and multi-modality in the posterior, even when these are absent from the initial approximation. We demonstrate theoretically that our method always improves the quality of the a...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Variational inference is an optimization-based method for approximating the posterior distribution o...
In this work, a framework to boost the efficiency of Bayesian inference in probabilistic models is i...
In this work, a framework to boost the efficiency of Bayesian inference in probabilistic models is i...
Boosting variational inference (BVI) approximates Bayesian posterior distributions by iteratively bu...
Recent advances in stochastic gradient variational inference have made it possi-ble to perform varia...
Recent advances in stochastic gradient varia-tional inference have made it possible to perform varia...
Abstract Stochastic variational inference makes it possible to approximate posterior distributions i...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
Recent advances in stochastic gradient variational inference have made it possible to perform variat...
We investigate a local reparameterizaton technique for greatly reducing the variance of stochastic g...
Variational methods are widely used for approximate posterior inference. However, their use is typic...
Variational methods for approximate Bayesian inference provide fast, flexible, deterministic alterna...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Variational inference is an optimization-based method for approximating the posterior distribution o...
In this work, a framework to boost the efficiency of Bayesian inference in probabilistic models is i...
In this work, a framework to boost the efficiency of Bayesian inference in probabilistic models is i...
Boosting variational inference (BVI) approximates Bayesian posterior distributions by iteratively bu...
Recent advances in stochastic gradient variational inference have made it possi-ble to perform varia...
Recent advances in stochastic gradient varia-tional inference have made it possible to perform varia...
Abstract Stochastic variational inference makes it possible to approximate posterior distributions i...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
Recent advances in stochastic gradient variational inference have made it possible to perform variat...
We investigate a local reparameterizaton technique for greatly reducing the variance of stochastic g...
Variational methods are widely used for approximate posterior inference. However, their use is typic...
Variational methods for approximate Bayesian inference provide fast, flexible, deterministic alterna...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...