Variational inference is a powerful paradigm for approximate Bayesian inference with a number of appealing properties, including support for model learning and data subsampling. By contrast MCMC methods like Hamiltonian Monte Carlo do not share these properties but remain attractive since, contrary to parametric methods, MCMC is asymptotically unbiased. For these reasons researchers have sought to combine the strengths of both classes of algorithms, with recent approaches coming closer to realizing this vision in practice. However, supporting data subsampling in these hybrid methods can be a challenge, a shortcoming that we address by introducing a surrogate likelihood that can be learned jointly with other variational parameters. We argue ...
Variational approximation methods are enjoying an increasing amount of development and use in statis...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Variational inference approximates the posterior distribution of a probabilistic model with a parame...
A key design constraint when implementing Monte Carlo and variational inference algorithms is that i...
We propose a new method to approximately integrate a function with respect to a given probability di...
Variational Bayesian inference and (collapsed) Gibbs sampling are the two important classes of infer...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
Recent advances in stochastic gradient varia-tional inference have made it possible to perform varia...
Markov chain Monte Carlo (MCMC) methods have been widely used in Bayesian inference involving intrac...
In this work, a framework to boost the efficiency of Bayesian inference in probabilistic models is i...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
Variational Bayesian Monte Carlo (VBMC) is a recently introduced framework that uses Gaussian proces...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
Recent advances in stochastic gradient variational inference have made it possible to perform variat...
Computing the partition function of a graphical model is a fundamental task in probabilistic inferen...
Variational approximation methods are enjoying an increasing amount of development and use in statis...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Variational inference approximates the posterior distribution of a probabilistic model with a parame...
A key design constraint when implementing Monte Carlo and variational inference algorithms is that i...
We propose a new method to approximately integrate a function with respect to a given probability di...
Variational Bayesian inference and (collapsed) Gibbs sampling are the two important classes of infer...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
Recent advances in stochastic gradient varia-tional inference have made it possible to perform varia...
Markov chain Monte Carlo (MCMC) methods have been widely used in Bayesian inference involving intrac...
In this work, a framework to boost the efficiency of Bayesian inference in probabilistic models is i...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
Variational Bayesian Monte Carlo (VBMC) is a recently introduced framework that uses Gaussian proces...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
Recent advances in stochastic gradient variational inference have made it possible to perform variat...
Computing the partition function of a graphical model is a fundamental task in probabilistic inferen...
Variational approximation methods are enjoying an increasing amount of development and use in statis...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Variational inference approximates the posterior distribution of a probabilistic model with a parame...