In rough set theory, attribute reduction aims to retain the discernability of the original attribute set, and many attribute reduction algorithms have been proposed in literatures. However, these methods are computationally time-consuming for large scale datasets. We develop a bisection method for attribute reduction and the main opinion is to partition the universe into smaller ones by using partition core attributes to reduce the complexity. Experiments and analysis show that, compared with the traditional un-bisection reduction algorithm, the developed bisection algorithm can significantly reduce computational time while maintaining their results as same as before. http://dx.doi.org/10.11591/telkomnika.v12i9.4913
The theory of rough set, proposed by Pawlak, provides a formal tool for knowledge discovery from imp...
Abstract—Attribute reduction of information system is one of the most important applications of roug...
Attribute reduction is very important in rough set-based data analysis (RSDA) because it can be used...
Traditional rough set theory is mainly used to reduce attributes and extract rules in databases in w...
Abstract:- Rough sets theory is an effective mathematical tool dealing with vagueness and uncertaint...
The divide and conquer method is a typical granular computing method using multiple levels of abstra...
Attribute reduction of an information system is a key problem in rough set theory and its applicatio...
AbstractFeature selection is a challenging problem in areas such as pattern recognition, machine lea...
[[abstract]]For data mining or machine learning, the plethora of parameters that may affect the effi...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
Attribute reduction, as an important preprocessing step for knowledge acquiring in data mining, is o...
AbstractComputing the core of decision information system and designing efficient relative attributi...
a b s t r a c t An improved discernibility function for rough set based attribute reduction is defin...
The attribute reduction problem for rough set is analyzed by the mutual information of attribute set...
AbstractAttribute reduction is one of the key issues in rough set theory. Many heuristic attribute r...
The theory of rough set, proposed by Pawlak, provides a formal tool for knowledge discovery from imp...
Abstract—Attribute reduction of information system is one of the most important applications of roug...
Attribute reduction is very important in rough set-based data analysis (RSDA) because it can be used...
Traditional rough set theory is mainly used to reduce attributes and extract rules in databases in w...
Abstract:- Rough sets theory is an effective mathematical tool dealing with vagueness and uncertaint...
The divide and conquer method is a typical granular computing method using multiple levels of abstra...
Attribute reduction of an information system is a key problem in rough set theory and its applicatio...
AbstractFeature selection is a challenging problem in areas such as pattern recognition, machine lea...
[[abstract]]For data mining or machine learning, the plethora of parameters that may affect the effi...
AbstractThe theory of rough set is a new mathematical tool to deal with the uncertain problems, and ...
Attribute reduction, as an important preprocessing step for knowledge acquiring in data mining, is o...
AbstractComputing the core of decision information system and designing efficient relative attributi...
a b s t r a c t An improved discernibility function for rough set based attribute reduction is defin...
The attribute reduction problem for rough set is analyzed by the mutual information of attribute set...
AbstractAttribute reduction is one of the key issues in rough set theory. Many heuristic attribute r...
The theory of rough set, proposed by Pawlak, provides a formal tool for knowledge discovery from imp...
Abstract—Attribute reduction of information system is one of the most important applications of roug...
Attribute reduction is very important in rough set-based data analysis (RSDA) because it can be used...