Copyright © 2015 by the author(s).We consider the problem of discriminative factor analysis for data that are in general non-Gaussian. A Bayesian model based on the ranks of the data is proposed. We first introduce a new max-margin version of the rank-likelihood. A discriminative factor model is then developed, integrating the max-margin rank-likelihood and (linear) Bayesian support vector machines, which are also built on the max-margin principle. The discriminative factor model is further extended to the nonlinear case through mixtures of local linear classifiers, via Dirichlet processes. Fully local conjugacy of the model yields efficient inference with both Markov Chain Monte Carlo and variational Bayes approaches. Extensive experiments...
This paper 1 proposes a method to extract nonlinear discriminant features from given input measure...
AbstractThe margin criterion for parameter learning in graphical models gained significant impact ov...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Although discriminative learning in graphical models generally improves classification results, the ...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
Meinicke P, Twellmann T, Ritter H. Discriminative Densities from Maximum Contrast Estimation. In: Be...
Abstract Factor analysis is a classical multivariate dimensionality reduction techniq...
This paper reports research into maximum likelihood parameter estimation for classification of data ...
Recently, Jaakkola and Haussler proposed a method for construct-ing kernel functions from probabilis...
A class of linear classification rules, specifically designed for high-dimensional problems, is prop...
We consider the problem of binary classification when the covariates conditioned on the each of the ...
In the application of discriminant analysis, a situation sometimes arises where individual measureme...
Recently, neuroimaging data have been increasingly used to study the causal relationship among brain...
This paper proposes a novel nonlinear discriminant analysis method named by Kernerlized Maximum Aver...
This paper 1 proposes a method to extract nonlinear discriminant features from given input measure...
AbstractThe margin criterion for parameter learning in graphical models gained significant impact ov...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Although discriminative learning in graphical models generally improves classification results, the ...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
Meinicke P, Twellmann T, Ritter H. Discriminative Densities from Maximum Contrast Estimation. In: Be...
Abstract Factor analysis is a classical multivariate dimensionality reduction techniq...
This paper reports research into maximum likelihood parameter estimation for classification of data ...
Recently, Jaakkola and Haussler proposed a method for construct-ing kernel functions from probabilis...
A class of linear classification rules, specifically designed for high-dimensional problems, is prop...
We consider the problem of binary classification when the covariates conditioned on the each of the ...
In the application of discriminant analysis, a situation sometimes arises where individual measureme...
Recently, neuroimaging data have been increasingly used to study the causal relationship among brain...
This paper proposes a novel nonlinear discriminant analysis method named by Kernerlized Maximum Aver...
This paper 1 proposes a method to extract nonlinear discriminant features from given input measure...
AbstractThe margin criterion for parameter learning in graphical models gained significant impact ov...
We consider the problem of learning density mixture models for Classification. Traditional learning ...