AbstractIn this paper we study local and global definability of incomplete data sets from the view point of decision rule induction. We assume that data sets are incomplete since some attribute values are lost and some are considered as irrelevant and called “do not care” conditions. Local definability uses blocks of attribute-value pairs as basic granules, while global definability uses characteristic sets. Local definability is more general than global definability. Local definability is essential for data mining since a concept is locally definable if and only if it can be expressed by decision rules. We study seven modifications of the characteristic relation and conclude that for five of them the corresponding characteristic sets are n...
The problem of uncertain and/or incomplete information in information tables is addressed in the pap...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
The original rough set theory deals with precise and complete data, while real applications frequent...
AbstractIn this paper we study local and global definability of incomplete data sets from the view p...
In this paper we assume that a data set is presented in the form of the incompletely specified decis...
Rough set theory is a useful approach for decision rule induction which is applied to large life dat...
Abstract. In this paper we present a new approach to handling in-complete information and classifier...
Using maximal consistent blocks of tolerance relation on the universe in incomplete decision table, ...
The rough set theory, based on the original definition of the indiscernibility relation, is not usef...
Abstract—This paper studies a problem of robust rule-based classification, i.e., making predictions ...
This paper discusses induction of decision rules from data tables representing information about a s...
In this paper, a framework for replacing missing values in a database is proposed since a real-world...
A rough set approach for attribute reduction is an important research subject in data mining and mac...
International audienceHandling missing values when tackling real-world datasets is a great challenge...
Rule induction is one of the key areas in data mining as it is applied to a large number of real lif...
The problem of uncertain and/or incomplete information in information tables is addressed in the pap...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
The original rough set theory deals with precise and complete data, while real applications frequent...
AbstractIn this paper we study local and global definability of incomplete data sets from the view p...
In this paper we assume that a data set is presented in the form of the incompletely specified decis...
Rough set theory is a useful approach for decision rule induction which is applied to large life dat...
Abstract. In this paper we present a new approach to handling in-complete information and classifier...
Using maximal consistent blocks of tolerance relation on the universe in incomplete decision table, ...
The rough set theory, based on the original definition of the indiscernibility relation, is not usef...
Abstract—This paper studies a problem of robust rule-based classification, i.e., making predictions ...
This paper discusses induction of decision rules from data tables representing information about a s...
In this paper, a framework for replacing missing values in a database is proposed since a real-world...
A rough set approach for attribute reduction is an important research subject in data mining and mac...
International audienceHandling missing values when tackling real-world datasets is a great challenge...
Rule induction is one of the key areas in data mining as it is applied to a large number of real lif...
The problem of uncertain and/or incomplete information in information tables is addressed in the pap...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
The original rough set theory deals with precise and complete data, while real applications frequent...