Huge amount of applications in various fields, such as gene expression analysis or computer vision, undergo data sets with high-dimensional low-sample-size (HDLSS), which has putted forward great challenges for standard statistical and modern machine learning methods. In this paper, we propose a novel classification criterion on HDLSS, tolerance similarity, which emphasizes the maximization of within-class variance on the premise of class separability. According to this criterion, a novel linear binary classifier is designed, denoted by No-separated Data Maximum Dispersion classifier (NPDMD). The objective of NPDMD is to find a projecting direction w in which all of training samples scatter in as large an interval as possible. NPDMD has sev...
available at the end of the article Background: Feature selection techniques use a search-criteria d...
The nearest subspace methods (NSM) are a category of classification methods widely applied to classi...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
Linear discriminant analysis (LDA) is a well-known technique for linear classification, feature extr...
Supervised learning techniques designed for the situation when the dimensionality exceeds the sample...
Abstract Linear discriminant analysis (LDA) often encounters small sample size (SSS) problem for hig...
High-dimensional with limited-sample size (HDLSS) datasets exhibit two critical problems: (1) Due to...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
The enormous power of modern computers has made possible the statistical modelling of data with dime...
Dimensionality reduction is an important aspect in the pattern classification literature, and linear...
Abstract. Linear Discriminant (LD) techniques are typically used in pattern recognition tasks when t...
Classification using linear discriminant analysis (LDA) is challenging when the number of variables...
AbstractThe pragmatic realism of the high dimensionality incurs limitations in many pattern recognit...
We discuss standard classification methods for high-dimensional data and a small number of observati...
Feature selection is a powerful dimension reduction technique which selects a subset of relevant fea...
available at the end of the article Background: Feature selection techniques use a search-criteria d...
The nearest subspace methods (NSM) are a category of classification methods widely applied to classi...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
Linear discriminant analysis (LDA) is a well-known technique for linear classification, feature extr...
Supervised learning techniques designed for the situation when the dimensionality exceeds the sample...
Abstract Linear discriminant analysis (LDA) often encounters small sample size (SSS) problem for hig...
High-dimensional with limited-sample size (HDLSS) datasets exhibit two critical problems: (1) Due to...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
The enormous power of modern computers has made possible the statistical modelling of data with dime...
Dimensionality reduction is an important aspect in the pattern classification literature, and linear...
Abstract. Linear Discriminant (LD) techniques are typically used in pattern recognition tasks when t...
Classification using linear discriminant analysis (LDA) is challenging when the number of variables...
AbstractThe pragmatic realism of the high dimensionality incurs limitations in many pattern recognit...
We discuss standard classification methods for high-dimensional data and a small number of observati...
Feature selection is a powerful dimension reduction technique which selects a subset of relevant fea...
available at the end of the article Background: Feature selection techniques use a search-criteria d...
The nearest subspace methods (NSM) are a category of classification methods widely applied to classi...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...