Feature transformation (FT) for dimensionality reduction has been deeply studied in the past decades. While the unsupervised FT algorithms cannot effectively utilize the discriminant information between classes in classification tasks, existing supervised FT algorithms have not yet caught up with the advances in classifier design. In this paper, based on the idea of controlling the probability of correct classification of a future test point as big as possible in the transformed feature space, a new supervised FT method called minimax probabilistic feature transformation (MPFT) is proposed for multi-class dataset. The experimental results on the UCI benchmark datasets and the high dimensional cancer gene expression datasets demonstrate that...
International audienceWith the ability to process many real-world problems, multi-label classificati...
This article presents the study regarding the problem of dimensionality reduction in training data s...
An important step in multivariate analysis is the dimensionality reduction, which allows for a bette...
We develop an approach for automatically learning the optimal feature transformation for a given cla...
This paper introduces a minimax framework for multiclass classification, which is applicable to gene...
The objective of multi-dimensional classification is to learn a function that accurately maps each d...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
Classification of high dimensional gene expression data is key to the development of effective di-ag...
This paper presents a novel method for simultaneous feature selection and classification by incorpor...
Multiclass classification and feature (variable) selections are commonly encountered in many biologi...
In this paper, we address the challenging task of learning accurate classifiers from micro-array dat...
AbstractMulti-dimensional classification aims at finding a function that assigns a vector of class v...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
Feature subset selection is an effective way for reducing dimensionality, removing irrelevant data, ...
International audienceWith the ability to process many real-world problems, multi-label classificati...
This article presents the study regarding the problem of dimensionality reduction in training data s...
An important step in multivariate analysis is the dimensionality reduction, which allows for a bette...
We develop an approach for automatically learning the optimal feature transformation for a given cla...
This paper introduces a minimax framework for multiclass classification, which is applicable to gene...
The objective of multi-dimensional classification is to learn a function that accurately maps each d...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
Classification of high dimensional gene expression data is key to the development of effective di-ag...
This paper presents a novel method for simultaneous feature selection and classification by incorpor...
Multiclass classification and feature (variable) selections are commonly encountered in many biologi...
In this paper, we address the challenging task of learning accurate classifiers from micro-array dat...
AbstractMulti-dimensional classification aims at finding a function that assigns a vector of class v...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
Feature subset selection is an effective way for reducing dimensionality, removing irrelevant data, ...
International audienceWith the ability to process many real-world problems, multi-label classificati...
This article presents the study regarding the problem of dimensionality reduction in training data s...
An important step in multivariate analysis is the dimensionality reduction, which allows for a bette...