This paper describes a novel, principled approach to real-valued dataset reduction based on fuzzy and rough set theory. The approach is based on the formulation of fuzzy-rough discernibility matrices, that can be transformed into a satisfiability problem; an extension of rough set approaches that only apply to discrete datasets. The fuzzy-rough hybrid reduction method is then realised algorithmically by a modified version of a traditional satisifability approach. This produces an efficient and provably optimal approach to data reduction that works well on a number of machine learning benchmarks in terms of both time and classification accuracy
Feature selection refers to the problem of selecting those input features that are most predictive o...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
One of the main obstacles facing the application of computational intelligence technologies in patte...
This paper describes a novel, principled approach to real-valued dataset reduction based on fuzzy an...
Feature selection refers to the problem of selecting those input features that are most predictive o...
Feature selection refers to the problem of selecting those input features that are most predictive o...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Feature selection refers to the problem of selecting those input features that are most predictive o...
Feature selection refers to the problem of selecting those input features that are most predictive o...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
One of the main obstacles facing the application of computational intelligence technologies in patte...
This paper describes a novel, principled approach to real-valued dataset reduction based on fuzzy an...
Feature selection refers to the problem of selecting those input features that are most predictive o...
Feature selection refers to the problem of selecting those input features that are most predictive o...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
There has been great interest in developing methodologies that are capable of dealing with imprecisi...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
In this paper, within the context of fuzzy rough set theory, we generalize the classical rough set f...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
Rough set theory provides a methodology for data analysis based on the approximation of concepts in ...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
In rough set based feature selection, the goal is to omit attributes (features) from decision system...
Feature selection refers to the problem of selecting those input features that are most predictive o...
Feature selection refers to the problem of selecting those input features that are most predictive o...
Dataset dimensionality is undoubtedly the single most significant obstacle which exasperates any att...
One of the main obstacles facing the application of computational intelligence technologies in patte...