Data dimensionality has become a pervasive problem in many areas that require the learning of interpretable models. This has become particularly pronounced in recent years with the seemingly relentless growth in the size of datasets. Indeed, as the number of dimensions increases, the number of data instances required in order to generate accurate models increases exponentially. Feature selection has therefore become not only a useful step in the process of model learning, but rather an increasingly necessary one. Rough set and fuzzy-rough set theory have been used as such dataset pre-processors with much success, however the underlying time/space complexity of the subset evaluation metric is an obstacle to the processing of very large data....
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
A concept of fuzzy discretization of feature space for a rough set theoretic classifier is explained...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...
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 various areas of learning have...
Research in the area of fuzzy-rough set theory, and its application to feature or attribute selectio...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Abstract—Dataset dimensionality is undoubtedly the single most significant obstacle which exasperate...
The well known principle of curse of dimensionality links both dimensions of a dataset stating that ...
The term “feature selection” refers to the problem of selecting the most predictive features for a g...
The well known principle of curse of dimensionality links both dimensions of a dataset stating that ...
The last two decades have seen many powerful classification systems being built for large-scale real...
Fuzzy-rough sets (FRS) encapsulate the related but distinct concepts of vagueness (for fuzzy sets...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
A concept of fuzzy discretization of feature space for a rough set theoretic classifier is explained...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...
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 various areas of learning have...
Research in the area of fuzzy-rough set theory, and its application to feature or attribute selectio...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Abstract—Dataset dimensionality is undoubtedly the single most significant obstacle which exasperate...
The well known principle of curse of dimensionality links both dimensions of a dataset stating that ...
The term “feature selection” refers to the problem of selecting the most predictive features for a g...
The well known principle of curse of dimensionality links both dimensions of a dataset stating that ...
The last two decades have seen many powerful classification systems being built for large-scale real...
Fuzzy-rough sets (FRS) encapsulate the related but distinct concepts of vagueness (for fuzzy sets...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
A concept of fuzzy discretization of feature space for a rough set theoretic classifier is explained...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...