Latent Gaussian models (LGMs) are widely used in statistics and machine learning. Bayesian inference in non-conjugate LGMs is difficult due to intractable integrals in-volving the Gaussian prior and non-conjugate likelihoods. Algorithms based on variational Gaussian (VG) approximations are widely employed since they strike a favorable bal-ance between accuracy, generality, speed, and ease of use. However, the structure of the optimization problems associated with these approximations remains poorly understood, and standard solvers take too long to con-verge. We derive a novel dual variational in-ference approach that exploits the convexity property of the VG approximations. We ob-tain an algorithm that solves a convex op-timization problem,...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
In this letter, we consider a variational approximate Bayesian inference framework, latent-space var...
We present a general method for deriving collapsed variational inference algorithms for probabilisti...
Latent Gaussian models (LGMs) are widely used in statistics and machine learning. Bayesian inference...
This thesis focuses on the variational learning of latent Gaussian models for discrete data. The lea...
Variational Gaussian (VG) inference methods that optimize a lower bound to the marginal likelihood a...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
Sparse variational Gaussian process (SVGP) methods are a common choice for non-conjugate Gaussian pr...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Latent Gaussian models (LGMs) are perhaps the most commonly used class of models in statistical appl...
Mean-field variational methods are widely used for approximate posterior inference in many probabili...
We consider criteria for variational representations of non-Gaussian latent variables, and derive va...
We propose a simple and effective variational inference algorithm based on stochastic optimi-sation ...
Mean-field variational methods are widely used for approximate posterior inference in many prob-abil...
Variational inference is a popular alternative to Markov chain Monte Carlo methods that constructs ...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
In this letter, we consider a variational approximate Bayesian inference framework, latent-space var...
We present a general method for deriving collapsed variational inference algorithms for probabilisti...
Latent Gaussian models (LGMs) are widely used in statistics and machine learning. Bayesian inference...
This thesis focuses on the variational learning of latent Gaussian models for discrete data. The lea...
Variational Gaussian (VG) inference methods that optimize a lower bound to the marginal likelihood a...
The results in this thesis are based on applications of the expectation propagation algorithm to app...
Sparse variational Gaussian process (SVGP) methods are a common choice for non-conjugate Gaussian pr...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Latent Gaussian models (LGMs) are perhaps the most commonly used class of models in statistical appl...
Mean-field variational methods are widely used for approximate posterior inference in many probabili...
We consider criteria for variational representations of non-Gaussian latent variables, and derive va...
We propose a simple and effective variational inference algorithm based on stochastic optimi-sation ...
Mean-field variational methods are widely used for approximate posterior inference in many prob-abil...
Variational inference is a popular alternative to Markov chain Monte Carlo methods that constructs ...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
In this letter, we consider a variational approximate Bayesian inference framework, latent-space var...
We present a general method for deriving collapsed variational inference algorithms for probabilisti...