This is the first book to compare eight LDFs by different types of datasets, such as Fisher’s iris data, medical data with collinearities, Swiss banknote data that is a linearly separable data (LSD), student pass/fail determination using student attributes, 18 pass/fail determinations using exam scores, Japanese automobile data, and six microarray datasets (the datasets) that are LSD. We developed the 100-fold cross-validation for the small sample method (Method 1) instead of the LOO method. We proposed a simple model selection procedure to choose the best model having minimum M2 and Revised IP-OLDF based on MNM criterion was found to be better than other M2s in the above datasets. We compared two statistical LDFs and six MP-based LDFs. Tho...
Abstract Linear discriminant analysis (LDA) often encounters small sample size (SSS) problem for hig...
In microarray experiments, the dimension p of the data is very large but there are only a few observ...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
This book shows how to decompose high-dimensional microarrays into small subspaces (Small Matryoshka...
Linear discriminant analysis (LDA) is one of the most popular methods of classification. For high-di...
Microarray datasets enables the analysis of expression of thousands of genes across hundreds of samp...
Dimension reduction and selection of a small number of genes with high ability, to discriminate obje...
Gene expression profiling has been widely used to study molecular signatures of many diseases and to...
High-dimensional data such as microarrays have brought us new statistical challenges. For example, u...
Abstract—High-dimensional data are common in many do-mains, and dimensionality reduction is the key ...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
<p>The number of differentially expressed genes in the final gene list of each contrast is listed, t...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Background: Machine learning is a powerful approach for describing and predicting classes in microar...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
Abstract Linear discriminant analysis (LDA) often encounters small sample size (SSS) problem for hig...
In microarray experiments, the dimension p of the data is very large but there are only a few observ...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
This book shows how to decompose high-dimensional microarrays into small subspaces (Small Matryoshka...
Linear discriminant analysis (LDA) is one of the most popular methods of classification. For high-di...
Microarray datasets enables the analysis of expression of thousands of genes across hundreds of samp...
Dimension reduction and selection of a small number of genes with high ability, to discriminate obje...
Gene expression profiling has been widely used to study molecular signatures of many diseases and to...
High-dimensional data such as microarrays have brought us new statistical challenges. For example, u...
Abstract—High-dimensional data are common in many do-mains, and dimensionality reduction is the key ...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
<p>The number of differentially expressed genes in the final gene list of each contrast is listed, t...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Background: Machine learning is a powerful approach for describing and predicting classes in microar...
Abstract: Data mining played vital role in comprehending, analyzing, understanding and interpreting ...
Abstract Linear discriminant analysis (LDA) often encounters small sample size (SSS) problem for hig...
In microarray experiments, the dimension p of the data is very large but there are only a few observ...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...