Motivation: The microarray report measures the expressions of tens of thousands of genes, producing a feature vector that is high in dimensionality and that contains much irrelevant information. This dimensionality degrades classification performance. Moreover, datasets typically contain few samples for training, leading to the “curse of dimensionality” problem. It is essential, therefore, to find good methods for reducing the size of the feature set. Results: In this paper, we propose a method for gene microarray classification that combines different feature reduction approaches for improving classification performance. Using a support vector machine (SVM) as our classifier, we examine an SVM trained using a set of selected genes; an SVM ...
Microarrays emerged in the 1990s as a consequence of the efforts to speed up the process of drug dis...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Abstract Dimension reduction is an important issue for analysis of gene expression microarray data, ...
Motivation: The microarray report measures the expressions of tens of thousands of genes, producing ...
∗The two first authors have contributed equally. The analysis of microarray data is a challenging ta...
In this project, we target to find effective and unsupervised feature reduction tools for gene expre...
The microarrays report the measures of the expression levels of tens of thousands of genes, this hig...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
We summarise various ways of performing dimensionality reduction on high-dimensional microarray data...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
Microarrays are novel biotechnological technology that is being used widely in cancer research. By a...
© 2015 Zena M. Hira and Duncan F. Gillies.We summarise various ways of performing dimensionality red...
The classification of cancers from gene expression profiles is a challenging research area in bioinf...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Genes comprised of DNA (Deoxyribonucleic Acid) molecules contain the blueprint of any living organis...
Microarrays emerged in the 1990s as a consequence of the efforts to speed up the process of drug dis...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Abstract Dimension reduction is an important issue for analysis of gene expression microarray data, ...
Motivation: The microarray report measures the expressions of tens of thousands of genes, producing ...
∗The two first authors have contributed equally. The analysis of microarray data is a challenging ta...
In this project, we target to find effective and unsupervised feature reduction tools for gene expre...
The microarrays report the measures of the expression levels of tens of thousands of genes, this hig...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
We summarise various ways of performing dimensionality reduction on high-dimensional microarray data...
Feature selection and classification are the main topics in microarray data analysis. Although many ...
Microarrays are novel biotechnological technology that is being used widely in cancer research. By a...
© 2015 Zena M. Hira and Duncan F. Gillies.We summarise various ways of performing dimensionality red...
The classification of cancers from gene expression profiles is a challenging research area in bioinf...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Genes comprised of DNA (Deoxyribonucleic Acid) molecules contain the blueprint of any living organis...
Microarrays emerged in the 1990s as a consequence of the efforts to speed up the process of drug dis...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
Abstract Dimension reduction is an important issue for analysis of gene expression microarray data, ...