none2The analysis of gene expression data involves the observation of a very large number of variables (genes) on a few units (tissues). In such a context conventional classification methods are difficult to employ both from analytical and interpretative points of view. In this work a gene selection procedure for classification problems is addressed. The dimensionality reduction is based on the projections of genes along suitable non gaussian directions obtained by Independent Factor Analysis (IFA). The performances of the proposed gene selection procedure are evaluated in the context of both supervised and unsupervised classification problems and applied to different real data sets.Titolo della collana: Studies in Classification, Data Anal...
Cancer is a large family of genetic diseases that involve abnormal cell growth. Genetic mutations ca...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
This paper presents an application of supervised machine learning approaches to the classification o...
The analysis of gene expression data involves the observation of a very large number of variables (g...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
Abstract — Genomic data are often characterized by small cardinality and high dimensionality. For th...
Abstract Genomic data, and more generally biomedical data, are often characterized by high dimension...
Summarization: Analysis and interpretation of gene-expression profiles, and the identification of re...
A major task in the statistical analysis of genetic data such as gene expressions and single nucleot...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
AbstractOur main interest in supervised classification of gene expression data is to infer whether t...
Abstract Background Classification of biological samples of gene expression data is a basic building...
The paper presents data mining methods applied to gene selection for recognition of a particular typ...
The paper presents data mining methods applied to gene selection for recognition of a particular typ...
Microarray data classification is one of the major interests in health informatics that aims at disc...
Cancer is a large family of genetic diseases that involve abnormal cell growth. Genetic mutations ca...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
This paper presents an application of supervised machine learning approaches to the classification o...
The analysis of gene expression data involves the observation of a very large number of variables (g...
Recently, feature selection and dimensionality reduction have become fundamental tools for many data...
Abstract — Genomic data are often characterized by small cardinality and high dimensionality. For th...
Abstract Genomic data, and more generally biomedical data, are often characterized by high dimension...
Summarization: Analysis and interpretation of gene-expression profiles, and the identification of re...
A major task in the statistical analysis of genetic data such as gene expressions and single nucleot...
AbstractClassification of gene expression data plays a significant role in prediction and diagnosis ...
AbstractOur main interest in supervised classification of gene expression data is to infer whether t...
Abstract Background Classification of biological samples of gene expression data is a basic building...
The paper presents data mining methods applied to gene selection for recognition of a particular typ...
The paper presents data mining methods applied to gene selection for recognition of a particular typ...
Microarray data classification is one of the major interests in health informatics that aims at disc...
Cancer is a large family of genetic diseases that involve abnormal cell growth. Genetic mutations ca...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
This paper presents an application of supervised machine learning approaches to the classification o...