We propose a new variational inference method based on a proximal framework that uses the Kullback-Leibler (KL) divergence as the proximal term. We make two contributions towards exploiting the geometry and structure of the variational bound. Firstly, we propose a KL proximal-point algorithm and show its equivalence to variational inference with natural gradients (e.g. stochastic variational inference). Secondly, we use the proximal framework to derive efficient variational algorithms for non-conjugate models. We propose a splitting procedure to separate non-conjugate terms from conjugate ones. We linearize the non-conjugate terms to obtain subproblems that admit a closed-form solution. Overall, our approach converts inference in a non-conj...
We propose a simple and effective variational inference algorithm based on stochastic optimi-sation ...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Variational Bayesian inference is an important machine-learning tool that finds application from sta...
We propose a new variational inference method based on a proximal framework that uses the Kullback-L...
Two popular approaches to forming bounds in approximate Bayesian inference are local variational met...
We present a general method for deriving collapsed variational inference algorithms for probabilisti...
We present a general method for deriving collapsed variational inference algo-rithms for probabilist...
We study the variational inference problem of minimizing a regularized Rényi divergence over an expo...
Mean-field variational methods are widely used for approximate posterior inference in many probabili...
We propose a novel Riemannian geometric framework for variational inference in Bayesian models based...
Mean-field variational methods are widely used for approximate posterior inference in many prob-abil...
This paper addresses the problem of iterative optimization of the Kullback-Leibler (KL) divergence o...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
International audienceConvex optimization problems involving information measures have been extensiv...
Over the past decade variational inference (VI) has surpassed Markov Chain Monte Carlo (MCMC) as the...
We propose a simple and effective variational inference algorithm based on stochastic optimi-sation ...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Variational Bayesian inference is an important machine-learning tool that finds application from sta...
We propose a new variational inference method based on a proximal framework that uses the Kullback-L...
Two popular approaches to forming bounds in approximate Bayesian inference are local variational met...
We present a general method for deriving collapsed variational inference algorithms for probabilisti...
We present a general method for deriving collapsed variational inference algo-rithms for probabilist...
We study the variational inference problem of minimizing a regularized Rényi divergence over an expo...
Mean-field variational methods are widely used for approximate posterior inference in many probabili...
We propose a novel Riemannian geometric framework for variational inference in Bayesian models based...
Mean-field variational methods are widely used for approximate posterior inference in many prob-abil...
This paper addresses the problem of iterative optimization of the Kullback-Leibler (KL) divergence o...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
International audienceConvex optimization problems involving information measures have been extensiv...
Over the past decade variational inference (VI) has surpassed Markov Chain Monte Carlo (MCMC) as the...
We propose a simple and effective variational inference algorithm based on stochastic optimi-sation ...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Variational Bayesian inference is an important machine-learning tool that finds application from sta...