Bilinear models of count data with Poisson distribution are popular in applications such as matrix factorization for recommendation systems, modeling of receptive fields of sensory neurons, and modeling of neural-spike trains. Bayesian inference in such models remains challenging due to the product term of two Gaussian random vectors. In this paper, we propose new algorithms for such models based on variational Gaussian (VG) inference. We make two contributions. First, we show that the VG lower bound for these models, previously known to be intractable, is available in closed form under certain non-trivial constraints on the form of the posterior. Second, we show that the lower bound is bi-concave and can be efficiently optimized for mean-f...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
We propose a nonparametric Bayesian, linear Poisson gamma model for count data and use it for dictio...
We show how to use a variational approximation to the logistic function to perform approximate infer...
Bilinear models of count data with Poisson distribution are popular in applications such as matrix f...
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...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The Poisson model is frequently employed to describe count data, but in a Bayesian context it leads ...
Bivariate count data arise in several different disciplines (epidemiology, marketing, sports statist...
Fast variational approximate algorithms are developed for Bayesian semiparametric regression when th...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
In recent years, the Poisson lognormal mixed model has been frequently used in modeling count data b...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
We propose a nonparametric Bayesian, linear Poisson gamma model for count data and use it for dictio...
We show how to use a variational approximation to the logistic function to perform approximate infer...
Bilinear models of count data with Poisson distribution are popular in applications such as matrix f...
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...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Variational Inference (VI) has become a popular technique to approximate difficult-to-compute poster...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The Poisson model is frequently employed to describe count data, but in a Bayesian context it leads ...
Bivariate count data arise in several different disciplines (epidemiology, marketing, sports statist...
Fast variational approximate algorithms are developed for Bayesian semiparametric regression when th...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
In recent years, the Poisson lognormal mixed model has been frequently used in modeling count data b...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
We propose a nonparametric Bayesian, linear Poisson gamma model for count data and use it for dictio...
We show how to use a variational approximation to the logistic function to perform approximate infer...