Due to increase in large number of document on the internet data mining becomes an important key parameter. Numerous data mining techniques are being carried for extracting the valuable information such as clustering, classification and cluster analysis. In the field of machine learning, pattern recognition and data mining, feature selection also called as attribute reduction becomes a challenging problem. Also the key lies in reducing the attributes and selecting the relevant features. Hence, to overcome the issues of attribute reduction we proposed Neighborhood positive region (NPR) based on rough set theory. In this paper we have shown the experimental result of NPR is implemented on three UCI data sets which show the computational time ...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
This report studies the feature selection based on the Expectation-Maximization Rough Set (RSEM) alg...
Of all of the challenges which face the effective application of computational intelli-gence technol...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
Rough set theories are utilized in class-specific feature selection to improve the classification pe...
By introducing a novel attribute reduction algorithm based on an extension neighborhood relation, it...
Rough set theory has been successfully applied to many fields, such as data mining, pattern recognit...
K nearest neighbor classifier (K-NN) is widely discussed and applied in pattern recognition and mach...
AbstractFeature selection is a challenging problem in areas such as pattern recognition, machine lea...
Abstract—Traditional rough set theory is only suitable for dealing with discrete variables and need ...
Feature selection plays an important role as a preprocessing step for pattern recognition and machin...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
This paper proposes a classifier that uses fuzzy rough set theory to improve the Fuzzy Nearest Neigh...
This presentation was given at the Third International Conference on Data Analytics (DATA ANALYTICS ...
Feature Selection (FS) or Attribute Reduction techniques are employed for dimensionality reduction a...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
This report studies the feature selection based on the Expectation-Maximization Rough Set (RSEM) alg...
Of all of the challenges which face the effective application of computational intelli-gence technol...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
Rough set theories are utilized in class-specific feature selection to improve the classification pe...
By introducing a novel attribute reduction algorithm based on an extension neighborhood relation, it...
Rough set theory has been successfully applied to many fields, such as data mining, pattern recognit...
K nearest neighbor classifier (K-NN) is widely discussed and applied in pattern recognition and mach...
AbstractFeature selection is a challenging problem in areas such as pattern recognition, machine lea...
Abstract—Traditional rough set theory is only suitable for dealing with discrete variables and need ...
Feature selection plays an important role as a preprocessing step for pattern recognition and machin...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
This paper proposes a classifier that uses fuzzy rough set theory to improve the Fuzzy Nearest Neigh...
This presentation was given at the Third International Conference on Data Analytics (DATA ANALYTICS ...
Feature Selection (FS) or Attribute Reduction techniques are employed for dimensionality reduction a...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
This report studies the feature selection based on the Expectation-Maximization Rough Set (RSEM) alg...
Of all of the challenges which face the effective application of computational intelli-gence technol...