Research in the area of fuzzy-rough set theory and its application to various areas of learning have generated great interest in recent years. In particular, there has been much work in the area of feature or attribute selection. Indeed, as the number of dimensions increases, the number of data objects required in order to generate accurate models increases exponentially. Thus, feature selection (FS) has become an increasingly necessary step in model learning. The use of fuzzy-rough sets as dataset pre-processors offers much in the way of flexibility, however the underlying complexity of the subset evaluation metric often presents a problem and can result in a great deal of potentially unnecessary computational effort. This paper proposes t...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Due to the explosive growth of stored information worldwide, feature selection (FS) is becoming an i...
Research in the area of fuzzy-rough set theory and its application to various areas of learning have...
Data dimensionality has become a pervasive problem in many areas that require the learning of interp...
Research in the area of fuzzy-rough set theory, and its application to feature or attribute selectio...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
Rough set theories are utilized in class-specific feature selection to improve the classification pe...
Abstract—Dataset dimensionality is undoubtedly the single most significant obstacle which exasperate...
The k-nearest neighbors classifier is a widely used classification method that has proven to be very...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...
Fuzzy rough set theory is not only an objective mathematical tool to deal with incomplete and uncert...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Due to the explosive growth of stored information worldwide, feature selection (FS) is becoming an i...
Research in the area of fuzzy-rough set theory and its application to various areas of learning have...
Data dimensionality has become a pervasive problem in many areas that require the learning of interp...
Research in the area of fuzzy-rough set theory, and its application to feature or attribute selectio...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
Rough set theories are utilized in class-specific feature selection to improve the classification pe...
Abstract—Dataset dimensionality is undoubtedly the single most significant obstacle which exasperate...
The k-nearest neighbors classifier is a widely used classification method that has proven to be very...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...
Fuzzy rough set theory is not only an objective mathematical tool to deal with incomplete and uncert...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Due to the explosive growth of stored information worldwide, feature selection (FS) is becoming an i...