This paper presents multi-conditional learning MCL), a training criterion based on a product of multiple conditional likelihoods. When combining the traditional conditional probability of label given input with a generative probability of input given label the later acts as a surprisingly effective regularizer. When applied to models with latent variables, MCL combines the structure-discovery capabilities of generative topic models, such as latent Dirichlet allocation and the exponential family harmonium, with the accuracy and robustness of discriminative classifiers, such as logistic regression and conditional random fields. We present results on several standard text data sets showing significant reductions in classification error due...
We propose a new generalized multiple-instance learning (MIL) algorithm, MICCLLR (multiple-instance ...
<p>We introduce a framework for unsupervised learning of structured predictors with overlapping, glo...
Graduation date: 2004Supervised learning is concerned with discovering the relationship between exam...
This paper presents multi-conditional learning (MCL), a training criterion based on a product of mul...
We introduce Multi-Conditional Learning, a framework for optimizing graphical models based not on jo...
We introduce predictive random fields, a framework for learning undirected graphical models based no...
•Two approaches to probabilistic modeling are usually distinguished: generative and discriminative [...
It is possible to broadly characterize two approaches to probabilistic modeling in terms of generati...
Deep generative models with latent variables have been used lately to learn joint representations an...
We consider the general problem of Multiple Model Learning (MML) from data, from the statistical and...
We study the problem of learning Bayesian classifiers (BC)when the true class label of the training ...
Real-world problems may contain latent dependencies (i.e., hidden sub-structures) that are dicult to...
Is there a principled way to learn a probabilistic discriminative classifier from an unlabeled data ...
We propose a novel information theoretic approach for semi-supervised learning of conditional random...
Multi-task learning (MTL) is considered for logistic-regression classifiers, based on a Dirichlet pr...
We propose a new generalized multiple-instance learning (MIL) algorithm, MICCLLR (multiple-instance ...
<p>We introduce a framework for unsupervised learning of structured predictors with overlapping, glo...
Graduation date: 2004Supervised learning is concerned with discovering the relationship between exam...
This paper presents multi-conditional learning (MCL), a training criterion based on a product of mul...
We introduce Multi-Conditional Learning, a framework for optimizing graphical models based not on jo...
We introduce predictive random fields, a framework for learning undirected graphical models based no...
•Two approaches to probabilistic modeling are usually distinguished: generative and discriminative [...
It is possible to broadly characterize two approaches to probabilistic modeling in terms of generati...
Deep generative models with latent variables have been used lately to learn joint representations an...
We consider the general problem of Multiple Model Learning (MML) from data, from the statistical and...
We study the problem of learning Bayesian classifiers (BC)when the true class label of the training ...
Real-world problems may contain latent dependencies (i.e., hidden sub-structures) that are dicult to...
Is there a principled way to learn a probabilistic discriminative classifier from an unlabeled data ...
We propose a novel information theoretic approach for semi-supervised learning of conditional random...
Multi-task learning (MTL) is considered for logistic-regression classifiers, based on a Dirichlet pr...
We propose a new generalized multiple-instance learning (MIL) algorithm, MICCLLR (multiple-instance ...
<p>We introduce a framework for unsupervised learning of structured predictors with overlapping, glo...
Graduation date: 2004Supervised learning is concerned with discovering the relationship between exam...