Rule induction is one of the key areas in data mining as it is applied to a large number of real life data. However, in such real life data, the information is incompletely specified most of the time. To induce rules from these incomplete data, more powerful algorithms are necessary. This research work mainly focuses on a probabilistic approach based on the valued tolerance relation. This thesis is divided into two parts. The first part describes the implementation of the valued tolerance relation. The induced rules are then evaluated based on the error rate due to incorrectly classified and unclassified examples. The second part of this research work shows a comparison of the rules induced by the MLEM2 algorithm that has been implemented b...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
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 ...
Rule induction is one of the key areas in data mining as it is applied to a large number of real lif...
In data mining, rule induction is a process of extracting formal rules from decision tables, where t...
The problem of uncertain and/or incomplete information in information tables is addressed in the pap...
In data mining, decision rules induced from known examples are used to classify unseen cases. There ...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
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...
The original rough set theory deals with precise and complete data, while real applications frequent...
Abstract: In the paper nine different approaches to missing attribute values are presented and compa...
The concept of valued tolerance is introduced as an extension of the usual concept of indiscernibili...
A rough set approach for attribute reduction is an important research subject in data mining and mac...
AbstractIn this paper we study local and global definability of incomplete data sets from the view p...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
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 ...
Rule induction is one of the key areas in data mining as it is applied to a large number of real lif...
In data mining, rule induction is a process of extracting formal rules from decision tables, where t...
The problem of uncertain and/or incomplete information in information tables is addressed in the pap...
In data mining, decision rules induced from known examples are used to classify unseen cases. There ...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
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...
The original rough set theory deals with precise and complete data, while real applications frequent...
Abstract: In the paper nine different approaches to missing attribute values are presented and compa...
The concept of valued tolerance is introduced as an extension of the usual concept of indiscernibili...
A rough set approach for attribute reduction is an important research subject in data mining and mac...
AbstractIn this paper we study local and global definability of incomplete data sets from the view p...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
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 ...