Abstract—Granular association rule is a new approach to reveal patterns hide in many-to-many relationships of relational databases. Different types of data such as nominal, numeric and multi-valued ones should be dealt with in the process of rule mining. In this paper, we study multi-valued data and develop techniques to filter out strong however uninteresting rules. An example of such rule might be “male students rate movies released in 1990s that are not thriller. ” This kind of rules, called negative granular association rules, often overwhelms positive ones which are more useful. To address this issue, we filter out negative granules such as “not thriller ” in the process of granule generation. In this way, only positive granular associ...
Association rule mining research typically focuses on positive association rules (PARs), generated f...
Copyright © 2014 Sajid Mahmood et al.This is an open access article distributed under theCreative Co...
AbstractIn view of the defects of Apriori association rule mining algorithm needed to scan database ...
Relational association rules reveal patterns hide in multiple tables. Existing rules are usually eva...
Association rule mining is one of the key issues in knowledge discovery. The discovery of frequent p...
Dealing with the large amount of data resulting from association rule mining is a big challenge. The...
Dealing with the large amount of data resulting from association rule mining is a big challenge. The...
This study was a step forward to improve the performance for discovering useful knowledge – especial...
Granular association rule mining is a new relational data mining approach to reveal patterns hidden ...
AbstractIn view of the defects of Apriori association rule mining algorithm needed to scan database ...
It is a big challenge to promise the quality of multidimensional association mining. The essential i...
Abstract—Mining association rules and especially the negative ones has received a lot of attention a...
It is a big challenge to promise the quality of multidimensional association mining. The essential i...
The focus of this paper is the discovery of negative as-sociation rules. Such association rules are ...
This paper presents interpretations for association rules. It first introduces Pawlak’s method, and ...
Association rule mining research typically focuses on positive association rules (PARs), generated f...
Copyright © 2014 Sajid Mahmood et al.This is an open access article distributed under theCreative Co...
AbstractIn view of the defects of Apriori association rule mining algorithm needed to scan database ...
Relational association rules reveal patterns hide in multiple tables. Existing rules are usually eva...
Association rule mining is one of the key issues in knowledge discovery. The discovery of frequent p...
Dealing with the large amount of data resulting from association rule mining is a big challenge. The...
Dealing with the large amount of data resulting from association rule mining is a big challenge. The...
This study was a step forward to improve the performance for discovering useful knowledge – especial...
Granular association rule mining is a new relational data mining approach to reveal patterns hidden ...
AbstractIn view of the defects of Apriori association rule mining algorithm needed to scan database ...
It is a big challenge to promise the quality of multidimensional association mining. The essential i...
Abstract—Mining association rules and especially the negative ones has received a lot of attention a...
It is a big challenge to promise the quality of multidimensional association mining. The essential i...
The focus of this paper is the discovery of negative as-sociation rules. Such association rules are ...
This paper presents interpretations for association rules. It first introduces Pawlak’s method, and ...
Association rule mining research typically focuses on positive association rules (PARs), generated f...
Copyright © 2014 Sajid Mahmood et al.This is an open access article distributed under theCreative Co...
AbstractIn view of the defects of Apriori association rule mining algorithm needed to scan database ...