Learning strategies are traditionally divided into two categories: unsupervised learning and supervised learning. In contrast, for feature selection, there are four different categories of training scenarios: 1) unsupervised; 2) (regular) supervised; 3) self-supervised (SS); and 4) doubly supervised. Many genomic applications naturally arise in either (regular) supervised or self-supervised formulation. The distinction of these two supervised scenarios lies in whether the class labels are assigned to the samples versus the features. This paper explains how to convert an SS formulation into a symmetric doubly supervised (SDS) formulation by a pairwise approach. The SDS formulation offers more explicit information for effective feature select...
When the standard approach to predict protein function by sequence homology fails, other alternative...
Supervised learning methods are used when one wants to construct a classifier. To use such a method,...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
effective data mining system lies in the representation of pattern vectors. For many bioinformatic a...
In biological sequence classification, it is common to convert variable-length sequences into fixed-...
Class prediction and feature selection are two learning tasks that are strictly paired in the searc...
Class prediction and feature selection are two learning tasks that are strictly paired in the search...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
This paper presents a novel feature selection method for classification of high dimensional data, su...
Microarray dataset dimensionality reduction is a prerequisite for avoiding overfitting, and hence de...
Abstract: When the standard approach to predict protein function by sequence homology fails, other a...
∗The two first authors have contributed equally. The analysis of microarray data is a challenging ta...
This paper proposes a new gene selection (or feature selection) method for DNA microarray data analy...
When the standard approach to predict protein function by sequence homology fails, other alternative...
Supervised learning methods are used when one wants to construct a classifier. To use such a method,...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
effective data mining system lies in the representation of pattern vectors. For many bioinformatic a...
In biological sequence classification, it is common to convert variable-length sequences into fixed-...
Class prediction and feature selection are two learning tasks that are strictly paired in the searc...
Class prediction and feature selection are two learning tasks that are strictly paired in the search...
This paper addresses feature selection techniques for classification of high dimensional data, such ...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
This paper presents a novel feature selection method for classification of high dimensional data, su...
Microarray dataset dimensionality reduction is a prerequisite for avoiding overfitting, and hence de...
Abstract: When the standard approach to predict protein function by sequence homology fails, other a...
∗The two first authors have contributed equally. The analysis of microarray data is a challenging ta...
This paper proposes a new gene selection (or feature selection) method for DNA microarray data analy...
When the standard approach to predict protein function by sequence homology fails, other alternative...
Supervised learning methods are used when one wants to construct a classifier. To use such a method,...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...