PLS dimension reduction is known to give good prediction accuracy in the context of classification with high-dimensional microarray data. In this paper, PLS is compared with some of the best state-of-the-art classification methods. In addition, a simple procedure to choose the number of components is suggested. The connection between PLS dimension reduction and gene selection is examined and a property of the first PLS component for binary classification is proven. PLS can also be used as a visualization tool for high-dimensional data in the classification framework. The whole study is based on 9 real microarray cancer data sets
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
This book shows how to decompose high-dimensional microarrays into small subspaces (Small Matryoshka...
Analysis and visualization of microarraydata is veryassistantfor biologists and clinicians in the fi...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Feature extraction is a proficient method for reducing dimensions in the analysis and prediction of ...
Abstract Dimension reduction is an important issue for analysis of gene expression microarray data, ...
MOTIVATION: Microarrays are capable of determining the expression levels of thousands of genes simul...
Abstract. Dimensionality reduction can often improve the performance of the k-nearest neighbor class...
We summarise various ways of performing dimensionality reduction on high-dimensional microarray data...
Dimensionality reduction can often improve the performance of the k-nearest neighbor classifier (kNN...
Abstract The recent technology development in the concern of microarray experiments has provided man...
Abstract Background With the advance of microarray technology, several methods for gene classificati...
Microarray analysis and visualization is very helpful for biologists and clinicians to understand ge...
© 2015 Zena M. Hira and Duncan F. Gillies.We summarise various ways of performing dimensionality red...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
This book shows how to decompose high-dimensional microarrays into small subspaces (Small Matryoshka...
Analysis and visualization of microarraydata is veryassistantfor biologists and clinicians in the fi...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Feature extraction is a proficient method for reducing dimensions in the analysis and prediction of ...
Abstract Dimension reduction is an important issue for analysis of gene expression microarray data, ...
MOTIVATION: Microarrays are capable of determining the expression levels of thousands of genes simul...
Abstract. Dimensionality reduction can often improve the performance of the k-nearest neighbor class...
We summarise various ways of performing dimensionality reduction on high-dimensional microarray data...
Dimensionality reduction can often improve the performance of the k-nearest neighbor classifier (kNN...
Abstract The recent technology development in the concern of microarray experiments has provided man...
Abstract Background With the advance of microarray technology, several methods for gene classificati...
Microarray analysis and visualization is very helpful for biologists and clinicians to understand ge...
© 2015 Zena M. Hira and Duncan F. Gillies.We summarise various ways of performing dimensionality red...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
This book shows how to decompose high-dimensional microarrays into small subspaces (Small Matryoshka...
Analysis and visualization of microarraydata is veryassistantfor biologists and clinicians in the fi...