Feature selection for data mining optimization receives quite a high demand especially on high-dimensional feature vectors of a data. Feature selection is a method used to select the best feature (or combination of features) for the data in order to achieve similar or better classification rate.Currently, there are three types of feature selection methods: filter, wrapper and embedded.This paper describes a genetic based wrapper approach that optimizes feature selection process embedded in a classification technique called a supervised Nearest Neighbour Distance Matrix (NNDM).This method is implemented and tested on several datasets obtained from the UCI Machine Learning Repository and other datasets.The results demonstrate a significant ...
DoctorFeature selection is the process of selecting a related subset that affects the performance of...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Statistical pattern recognition techniques classify objects in terms of a representative set of feat...
Research Doctorate - Doctor of Philosophy (PhD)Feature selection is an important step for generating...
This paper discusses a genetic-algorithm-based approach for selecting a small number of representati...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Each data mining application has widespread issue; dataset has gigantic number of features which are...
The design of a pattern classifier includes an attempt to select, among a set of possible features, ...
This article presents a two-phase scheme to select reduced number of features from a dataset using G...
Computer assisted medical diagnosis is a major machine learning problem being researched recently. G...
Abstract: The problem of feature selection in data mining is an important real-world problem that in...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
This article provides an optimisation method using a Genetic Algorithm approach to apply feature sel...
Several recent machine learning publicationsdemonstrate the utility of using feature selectionalgori...
Problem statement: Feature selection is a task of crucial importance for the application of machine ...
DoctorFeature selection is the process of selecting a related subset that affects the performance of...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Statistical pattern recognition techniques classify objects in terms of a representative set of feat...
Research Doctorate - Doctor of Philosophy (PhD)Feature selection is an important step for generating...
This paper discusses a genetic-algorithm-based approach for selecting a small number of representati...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Each data mining application has widespread issue; dataset has gigantic number of features which are...
The design of a pattern classifier includes an attempt to select, among a set of possible features, ...
This article presents a two-phase scheme to select reduced number of features from a dataset using G...
Computer assisted medical diagnosis is a major machine learning problem being researched recently. G...
Abstract: The problem of feature selection in data mining is an important real-world problem that in...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
This article provides an optimisation method using a Genetic Algorithm approach to apply feature sel...
Several recent machine learning publicationsdemonstrate the utility of using feature selectionalgori...
Problem statement: Feature selection is a task of crucial importance for the application of machine ...
DoctorFeature selection is the process of selecting a related subset that affects the performance of...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
Statistical pattern recognition techniques classify objects in terms of a representative set of feat...