<p>Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived priors to incorporate domain knowledge for discovering improved latent representations. While priors affect posterior distributions through Bayes' rule, imposing posterior regularization is arguably more direct and in some cases more natural and general. In this paper, we present <em>regularized Bayesian inference</em> (RegBayes), a novel computational framework that performs posterior inference with a regularization term on the desired post-data posterior distribution under an information theoretical formulation. RegBayes is more flexible than the procedure that elicits expert knowledge via priors, and it covers both directed Bayesian networ...
In the Bayesian reinforcement learning (RL) setting, a prior distribution over the unknown problem p...
Priors for Bayesian nonparametric latent feature models were originally developed a little over five...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
Unlike existing nonparametric Bayesian models, which rely solely on specially conceived priors to in...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
Supervised machine learning techniques have been very successful for a variety of tasks and domains ...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
The Bayesian framework offers a flexible tool for regularization in the high dimensional setting. In...
We present Posterior Regularization, a probabilistic framework for structured, weakly supervised lea...
24 pages, including 2 pages of references and 10 pages of appendixIn machine learning, it is common ...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
In the Bayesian reinforcement learning (RL) setting, a prior distribution over the unknown problem p...
Priors for Bayesian nonparametric latent feature models were originally developed a little over five...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
Unlike existing nonparametric Bayesian models, which rely solely on specially conceived priors to in...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
Supervised machine learning techniques have been very successful for a variety of tasks and domains ...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
The Bayesian framework offers a flexible tool for regularization in the high dimensional setting. In...
We present Posterior Regularization, a probabilistic framework for structured, weakly supervised lea...
24 pages, including 2 pages of references and 10 pages of appendixIn machine learning, it is common ...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
In the Bayesian reinforcement learning (RL) setting, a prior distribution over the unknown problem p...
Priors for Bayesian nonparametric latent feature models were originally developed a little over five...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...