This article presents a two-phase scheme to select reduced number of features from a dataset using Genetic Algorithm (GA) and testing the classification accuracy (CA) of the dataset with the reduced feature set. In the first phase of the proposed work, an unsupervised approach to select a subset of features is applied. GA is used to select stochastically reduced number of features with Sammon Error as the fitness function. Different subsets of features are obtained. In the second phase, each of the reduced features set is applied to test the CA of the dataset. The CA of a data set is validated using supervised k-nearest neighbor (k-nn) algorithm. The novelty of the proposed scheme is that each reduced feature set obtained in the first phase...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
A nearest-neighbor classifier compares an unclassified object to a set of preclassified examples and...
Each data mining application has widespread issue; dataset has gigantic number of features which are...
Accurate classification of data sets is an important phenomenon for many applications. While multi-d...
Classification problem especially for high dimensional datasets have attracted many researchers in o...
The feature selection process can be considered a problem of global combinatorial optimization in ma...
The design of a pattern classifier includes an attempt to select, among a set of possible features, ...
This paper discusses a genetic-algorithm-based approach for selecting a small number of representati...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
Statistical pattern recognition techniques classify objects in terms of a representative set of feat...
We present a simple genetic algorithm (sGA), which is developed under Genetic Rule and Classifier Co...
In this paper we summarize our research on classification and feature extraction for high-dimensiona...
Feature selection for data mining optimization receives quite a high demand especially on high-dime...
Abstract: Feature subset selection is a process of selecting a subset of minimal, relevant features ...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
A nearest-neighbor classifier compares an unclassified object to a set of preclassified examples and...
Each data mining application has widespread issue; dataset has gigantic number of features which are...
Accurate classification of data sets is an important phenomenon for many applications. While multi-d...
Classification problem especially for high dimensional datasets have attracted many researchers in o...
The feature selection process can be considered a problem of global combinatorial optimization in ma...
The design of a pattern classifier includes an attempt to select, among a set of possible features, ...
This paper discusses a genetic-algorithm-based approach for selecting a small number of representati...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
Statistical pattern recognition techniques classify objects in terms of a representative set of feat...
We present a simple genetic algorithm (sGA), which is developed under Genetic Rule and Classifier Co...
In this paper we summarize our research on classification and feature extraction for high-dimensiona...
Feature selection for data mining optimization receives quite a high demand especially on high-dime...
Abstract: Feature subset selection is a process of selecting a subset of minimal, relevant features ...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Practical pattern classification and knowledge discovery problems require selection of a subset of a...
A nearest-neighbor classifier compares an unclassified object to a set of preclassified examples and...