In this paper we implement and test the recently described nearest subspace classifier on a range of microarray cancer datasets. Its classification accuracy is tested against nearest neighbor and nearest centroid algorithms, and is shown to give a significant improvement. This classification system uses class-dependent PCA to construct a subspace for each class. Test vectors are assigned the class label of the nearest subspace, which is defined as the minimum reconstruction error across all subspaces. Furthermore, we demonstrate this distance measure is equivalent to the null-space component of the vector being analyzed. PRIB 2008 proceedings found at: http://dx.doi.org/10.1007/978-3-540-88436-1 Contributors: Monash University. Faculty of ...
Abstract. Dimensionality reduction can often improve the performance of the k-nearest neighbor class...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
The problem of extracting spots from DNA microarrays is a problem of considerable scientific and eco...
Abstract Background The most fundamental task using gene expression data in clinical oncology is to ...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Accurate classification of DNA microarray data is vital for cancer diagnosis and treatment. For grea...
Feature extraction is a proficient method for reducing dimensions in the analysis and prediction of ...
Due to the disproportionate difference between the number of genes and samples, microarray data anal...
AbstractIn the analysis of gene expression profiles, the selection of genetic markers and precise di...
Cancer is the second largest cause of death in the world; in 2015, a total of 8.8 million mortalitie...
Microarray is a well-established technology to analyze the expression of many genes in a single reac...
Microarray databases are a large source of genetic data, which, upon proper analysis, could enhance ...
AbstractIn the late 19th century, the advent of malignant tissues in the human cells has come into l...
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
Multiclass cancer classification is still a challenging task in the field of machine learning. A nov...
Abstract. Dimensionality reduction can often improve the performance of the k-nearest neighbor class...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
The problem of extracting spots from DNA microarrays is a problem of considerable scientific and eco...
Abstract Background The most fundamental task using gene expression data in clinical oncology is to ...
High-dimensional data analysis characterises many contemporary problems in statistics and arise in m...
Accurate classification of DNA microarray data is vital for cancer diagnosis and treatment. For grea...
Feature extraction is a proficient method for reducing dimensions in the analysis and prediction of ...
Due to the disproportionate difference between the number of genes and samples, microarray data anal...
AbstractIn the analysis of gene expression profiles, the selection of genetic markers and precise di...
Cancer is the second largest cause of death in the world; in 2015, a total of 8.8 million mortalitie...
Microarray is a well-established technology to analyze the expression of many genes in a single reac...
Microarray databases are a large source of genetic data, which, upon proper analysis, could enhance ...
AbstractIn the late 19th century, the advent of malignant tissues in the human cells has come into l...
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
Multiclass cancer classification is still a challenging task in the field of machine learning. A nov...
Abstract. Dimensionality reduction can often improve the performance of the k-nearest neighbor class...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
The problem of extracting spots from DNA microarrays is a problem of considerable scientific and eco...