We show how variational Bayesian inference can be implemented for very large generalized linear models. Our relaxation is proven to be a convex problem for any log-concave model. We provide a generic double loop algorithm for solving this relaxation on models with arbitrary super-Gaussian potentials. By iteratively decoupling the criterion, most of the work can be done by solving large linear systems, rendering our algorithm orders of magnitude faster than previously proposed solvers for the same problem. We evaluate our method on problems of Bayesian active learning for large binary classification models, and show how to address settings with many candidates and sequential inclusion steps
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Discrete state spaces represent a major computational challenge to statistical inference, since the ...
We present a framework for efficient, accurate approximate Bayesian inference in generalized linear ...
We show how variational Bayesian inference can be implemented for very large generalized linear mode...
We show how variational Bayesian inference can be implemented for very large binary classification g...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Variational Gaussian (VG) inference methods that optimize a lower bound to the marginal likelihood a...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Abstract—In this paper, we consider many problems in Bayesian inference- from drawing samples to pos...
Two popular approaches to forming bounds in approximate Bayesian inference are local variational met...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
Decision making in light of uncertain and incomplete knowledge is one of the central themes in stati...
Many problems of low-level computer vision and image processing, such as denoising, deconvolution, t...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Discrete state spaces represent a major computational challenge to statistical inference, since the ...
We present a framework for efficient, accurate approximate Bayesian inference in generalized linear ...
We show how variational Bayesian inference can be implemented for very large generalized linear mode...
We show how variational Bayesian inference can be implemented for very large binary classification g...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Variational Gaussian (VG) inference methods that optimize a lower bound to the marginal likelihood a...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Abstract—In this paper, we consider many problems in Bayesian inference- from drawing samples to pos...
Two popular approaches to forming bounds in approximate Bayesian inference are local variational met...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
Decision making in light of uncertain and incomplete knowledge is one of the central themes in stati...
Many problems of low-level computer vision and image processing, such as denoising, deconvolution, t...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Discrete state spaces represent a major computational challenge to statistical inference, since the ...
We present a framework for efficient, accurate approximate Bayesian inference in generalized linear ...