Kernel logistic regression (KLR) is the kernel learning method best suited to binary pattern recognition problems where estimates of a-posteriori probability of class membership are required. Such problems occur frequently in practical applications, for instance because the operational prior class probabilities or equivalently the relative misclassification costs are variable or unknown at the time of training the model. The model parameters are given by the solution of a convex optimization problem, which may be found via an efficient iteratively re-weighted least squares (IRWLS) procedure. The generalization properties of a kernel logistic regression machine are however governed by a small number of hyper-parameters, the values of which m...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.8-12...
In this paper we present a simple hierarchical Bayesian treatment of the sparse kernel logistic regr...
The kernel regularized least squares (KRLS) method uses the kernel trick to perform non-linear regre...
Kernel logistic regression models, like their linear counterparts, can be trained using the efficien...
While the model parameters of a kernel machine are typically given by the solution of a convex optim...
Mika et al. [1] introduce a non-linear formulation of the Fisher discriminant based the well-known "...
The classical machinery of supervised learning machines relies on a correct set of training labels. ...
Mika et al. (1999) introduce a non-linear formulation of Fisher's linear discriminant, based the now...
While the model parameters of many kernel learning methods are given by the solution of a convex opt...
The support vector machine (SVM) is known for its good performance in binary classification, but its...
Mika et al. [1] apply the “kernel trick ” to obtain a non-linear variant of Fisher’s linear discrimi...
Model selection in kernel linear discriminant analysis (KLDA) refers to the selection of appropriate...
Logistic Regression is a well known classification method in the field of statistical learning. Rece...
In this paper we present a simple hierarchical Bayesian treatment of the sparse kernel logistic regr...
Kernel Logistic PLS (KL-PLS), a new tool for classification with performances similar to the most po...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.8-12...
In this paper we present a simple hierarchical Bayesian treatment of the sparse kernel logistic regr...
The kernel regularized least squares (KRLS) method uses the kernel trick to perform non-linear regre...
Kernel logistic regression models, like their linear counterparts, can be trained using the efficien...
While the model parameters of a kernel machine are typically given by the solution of a convex optim...
Mika et al. [1] introduce a non-linear formulation of the Fisher discriminant based the well-known "...
The classical machinery of supervised learning machines relies on a correct set of training labels. ...
Mika et al. (1999) introduce a non-linear formulation of Fisher's linear discriminant, based the now...
While the model parameters of many kernel learning methods are given by the solution of a convex opt...
The support vector machine (SVM) is known for its good performance in binary classification, but its...
Mika et al. [1] apply the “kernel trick ” to obtain a non-linear variant of Fisher’s linear discrimi...
Model selection in kernel linear discriminant analysis (KLDA) refers to the selection of appropriate...
Logistic Regression is a well known classification method in the field of statistical learning. Rece...
In this paper we present a simple hierarchical Bayesian treatment of the sparse kernel logistic regr...
Kernel Logistic PLS (KL-PLS), a new tool for classification with performances similar to the most po...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.8-12...
In this paper we present a simple hierarchical Bayesian treatment of the sparse kernel logistic regr...
The kernel regularized least squares (KRLS) method uses the kernel trick to perform non-linear regre...