Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where there is a clear link between the constructs (i.e., lower approximation, positive region, etc) and the problem (i.e., finding reducts). However, there has not been much development with regards to instance selection. Previous techniques have focused on preserving the positive region or the dependency, or have concentrated on prototype selection. This paper proposes a general instance selection approach that is efficient and effective in finding reductions that maintain the integrity of the underlying class structure. By utilizing the lower approximation information, instances can be removed that have a high similarity with more representativ...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Prototype Selection (PS) is the preprocessing technique for K nearest neighbor classification that s...
Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Research in the area of fuzzy-rough set theory and its application to various areas of learning have...
Instance selection methods are a class of preprocessing techniques that have been widely studied in ...
In recent years, the increasing interest in fuzzy rough set theory has allowed the definition of no...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...
Due to the explosive growth of stored information worldwide, feature selection (FS) is becoming an i...
The k-nearest neighbors classifier is a widely used classification method that has proven to be very...
Abstract—Dataset dimensionality is undoubtedly the single most significant obstacle which exasperate...
Rough set theory has proven to be a useful mathematicalbasis for developing automated computational ...
The term “feature selection” refers to the problem of selecting the most predictive features for a g...
The last two decades have seen many powerful classification systems being built for large-scale real...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Prototype Selection (PS) is the preprocessing technique for K nearest neighbor classification that s...
Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Research in the area of fuzzy-rough set theory and its application to various areas of learning have...
Instance selection methods are a class of preprocessing techniques that have been widely studied in ...
In recent years, the increasing interest in fuzzy rough set theory has allowed the definition of no...
Various strategies have been exploited for the task of feature selection, in an effort to identify m...
Due to the explosive growth of stored information worldwide, feature selection (FS) is becoming an i...
The k-nearest neighbors classifier is a widely used classification method that has proven to be very...
Abstract—Dataset dimensionality is undoubtedly the single most significant obstacle which exasperate...
Rough set theory has proven to be a useful mathematicalbasis for developing automated computational ...
The term “feature selection” refers to the problem of selecting the most predictive features for a g...
The last two decades have seen many powerful classification systems being built for large-scale real...
With the continued and relentless growth in dataset sizes in recent times, feature or attribute sele...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Prototype Selection (PS) is the preprocessing technique for K nearest neighbor classification that s...