AbstractThis paper presents a novel feature selection approach to deal with issues of high dimensionality in biomedical data classification. Extensive research has been performed in the field of pattern recognition and machine learning. Dozens of feature selection methods have been developed in the literature, which can be classified into three main categories: filter, wrapper and hybrid approaches. Filter methods apply an independent test without involving any learning algorithm, while wrapper methods require a predetermined learning algorithm for feature subset evaluation. Filter and wrapper methods have their, respectively, drawbacks and are complementary to each other in that filter approaches have low computational cost with insufficie...
High dimensional biomedical data are becoming common in various predictive models developed for dise...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
AbstractClinical feature selection problem is the task of selecting and identifying a subset of info...
This paper presents a novel feature selection approach to deal with issues of high dimensionality in...
Feature selection is the process of identifying the most relevant features from the given data havin...
Generally, medical dataset classification has become one of the biggest problems in data mining rese...
High dimensional biomedical data contain tens of thousands of features, accurate and effective ident...
AbstractSelection of optimal features is an important area of research in medical data mining system...
In health care, automatic disease diagnosis is a precious tool because of limited observation of the...
Abstract In the design of classification models, irrelevant or noisy features are often generated. I...
The automated analysis of patients’ biomedical data can be used to de-rive diagnostic and prognostic...
AbstractThe automated analysis of patients’ biomedical data can be used to derive diagnostic and pro...
Feature selection is a strategy for preprocessing that determines the main features of a specific pr...
This article studies the impact of feature selection methods on the results of bioinformatics data c...
In this study we report the advances in supervised learning methods that have been devised to analyz...
High dimensional biomedical data are becoming common in various predictive models developed for dise...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
AbstractClinical feature selection problem is the task of selecting and identifying a subset of info...
This paper presents a novel feature selection approach to deal with issues of high dimensionality in...
Feature selection is the process of identifying the most relevant features from the given data havin...
Generally, medical dataset classification has become one of the biggest problems in data mining rese...
High dimensional biomedical data contain tens of thousands of features, accurate and effective ident...
AbstractSelection of optimal features is an important area of research in medical data mining system...
In health care, automatic disease diagnosis is a precious tool because of limited observation of the...
Abstract In the design of classification models, irrelevant or noisy features are often generated. I...
The automated analysis of patients’ biomedical data can be used to de-rive diagnostic and prognostic...
AbstractThe automated analysis of patients’ biomedical data can be used to derive diagnostic and pro...
Feature selection is a strategy for preprocessing that determines the main features of a specific pr...
This article studies the impact of feature selection methods on the results of bioinformatics data c...
In this study we report the advances in supervised learning methods that have been devised to analyz...
High dimensional biomedical data are becoming common in various predictive models developed for dise...
Feature selection techniques have become an apparent need in many bioinformatics applications. In ad...
AbstractClinical feature selection problem is the task of selecting and identifying a subset of info...