Within the kernel methods, an improved kernel credal classification algorithm (KCCR) has been proposed. The KCCR algorithm uses the Euclidean distance in the kernel function. In this article, we propose to replace the Euclidean distance in the kernel with a regularized Mahalanobis metric. The Mahalanobis distance takes into account the dispersion of the data and the correlation between the variables. It differs from Euclidean distance in that it considers the variance and correlation of the dataset. The robustness of the method is tested using synthetic data and a benchmark database. Finally, a set of DNA microarray data from Leukemia dataset was used to show the performance of our method on real-world application
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...
Abstract. Within the framework of kernel methods, linear data methods have al-most completely been e...
Abstract Background The most fundamental task using gene expression data in clinical oncology is to ...
The classification of high dimensional data with kernel methods is considered in this article. Explo...
International audienceThe classification of high dimensional data with kernel methods is considered i...
The present article is devoted to experimental investigation of the performance of three machine lea...
We develop and apply a novel framework which is designed to extract information in the form of a pos...
Modern machine learning techniques are proving to be extremely valuable for the analysis of data in ...
A randomized algorithm for learning Mahalanobis metrics: application to classification and regressio...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
MOTIVATION: Microarrays are capable of determining the expression levels of thousands of genes simul...
Distance functions are a fundamental ingredient of classification and clustering procedures, and thi...
Traditional k-means and most k-means variants are still computationally expensive for large datasets...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...
Abstract. Within the framework of kernel methods, linear data methods have al-most completely been e...
Abstract Background The most fundamental task using gene expression data in clinical oncology is to ...
The classification of high dimensional data with kernel methods is considered in this article. Explo...
International audienceThe classification of high dimensional data with kernel methods is considered i...
The present article is devoted to experimental investigation of the performance of three machine lea...
We develop and apply a novel framework which is designed to extract information in the form of a pos...
Modern machine learning techniques are proving to be extremely valuable for the analysis of data in ...
A randomized algorithm for learning Mahalanobis metrics: application to classification and regressio...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
MOTIVATION: Microarrays are capable of determining the expression levels of thousands of genes simul...
Distance functions are a fundamental ingredient of classification and clustering procedures, and thi...
Traditional k-means and most k-means variants are still computationally expensive for large datasets...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...