Max-margin learning is a powerful approach to building classifiers and structured output predictors. Recent work on max-margin supervised topic models has successfully integrated it with Bayesian topic models to discover discriminative latent semantic structures and make accurate predictions for unseen testing data. However, the resulting learning prob-lems are usually hard to solve because of the non-smoothness of the margin loss. Existing approaches to building max-margin supervised topic models rely on an iterative procedure to solve multiple latent SVM subproblems with additional mean-field assumptions on the desired posterior distributions. This paper presents an alternative approach by defining a new max-margin loss. Namely, we presen...
120 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Third, we address an importan...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
In this paper, we address the problem of statistical learning for multitopic text categorization (MT...
<p>A supervised topic model can use side information such as ratings or labels associated with docum...
A supervised topic model can use side information such as ratings or labels associated with doc-umen...
ABSTRACT Topic models have played a pivotal role in analyzing large collections of complex data. Bes...
An effective strategy to exploit the supervising side information for discovering predictive topic r...
Upstream supervised topic models have been widely used for complicated scene understanding. However,...
Upstream supervised topic models have been widely used for complicated scene understanding. However,...
International audienceWe propose a new family of latent variable models called max-margin min-entrop...
We frame max-margin learning of latent variable structured prediction models as a convex optimizatio...
We present max-margin Bayesian clustering (BMC), a general and robust frame-work that incorporates t...
Abstract. We consider the problem of training discriminative struc-tured output predictors, such as ...
We frame max-margin learning of latent variable structured prediction models as a convex opti-mizati...
We investigate a Gaussian latent variable model for semi-supervised learning of linear large mar-gin...
120 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Third, we address an importan...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
In this paper, we address the problem of statistical learning for multitopic text categorization (MT...
<p>A supervised topic model can use side information such as ratings or labels associated with docum...
A supervised topic model can use side information such as ratings or labels associated with doc-umen...
ABSTRACT Topic models have played a pivotal role in analyzing large collections of complex data. Bes...
An effective strategy to exploit the supervising side information for discovering predictive topic r...
Upstream supervised topic models have been widely used for complicated scene understanding. However,...
Upstream supervised topic models have been widely used for complicated scene understanding. However,...
International audienceWe propose a new family of latent variable models called max-margin min-entrop...
We frame max-margin learning of latent variable structured prediction models as a convex optimizatio...
We present max-margin Bayesian clustering (BMC), a general and robust frame-work that incorporates t...
Abstract. We consider the problem of training discriminative struc-tured output predictors, such as ...
We frame max-margin learning of latent variable structured prediction models as a convex opti-mizati...
We investigate a Gaussian latent variable model for semi-supervised learning of linear large mar-gin...
120 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Third, we address an importan...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
In this paper, we address the problem of statistical learning for multitopic text categorization (MT...