The output of boolean association rule mining algorithms is often too large for manual examination. For dense datasets, it is often impractical to even generate all frequent itemsets. The closed itemset approach handles this information overload by pruning "uninteresting" rules following the observation that most rules can be derived from other rules. In this paper, we propose a new framework, namely, the generalized closed (or g-closed) itemset framework. By allowing for a small tolerance in the accuracy of itemset supports, we show that the number of such redundant rules is far more than what was previously estimated. Our scheme can be integrated into both levelwise algorithms (Apriori) and two-pass algorithms (ARMOR). We evaluate its per...
Introduction We address the question of how much space remains for performance improvement over cur...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Due to the voluminous amount of itemsets that are generated, the association rules extracted from th...
The output of boolean association rule mining algorithms is often too large for manual examination. ...
The output of boolean association rule mining algorithms is often too large for manual examination. ...
The output of boolean association rule mining algo-rithms is often too large for manual examination....
Real world applications of association rule mining have well-known problems of discovering a large n...
The traditional association rule mining framework produces many redundant rules. The extent of redun...
Real world applications of association rule mining have well-known problems of discovering a large n...
Association rules are a class of regularities that expresses statistical information about cooccurre...
It is well-recognized that the main factor that hinders the applications of Association Rules (ARs) ...
International audienceIn this paper, we address the problem of the understandability and usefulness ...
ABSTRACT. In this paper, we address the problem of the usefulness of the set of discovered asso-ciat...
The problem of discovering association rules has received considerable research attention and severa...
Generalized association rules as introduced in [9] and [5] are a very important extension of the so ...
Introduction We address the question of how much space remains for performance improvement over cur...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Due to the voluminous amount of itemsets that are generated, the association rules extracted from th...
The output of boolean association rule mining algorithms is often too large for manual examination. ...
The output of boolean association rule mining algorithms is often too large for manual examination. ...
The output of boolean association rule mining algo-rithms is often too large for manual examination....
Real world applications of association rule mining have well-known problems of discovering a large n...
The traditional association rule mining framework produces many redundant rules. The extent of redun...
Real world applications of association rule mining have well-known problems of discovering a large n...
Association rules are a class of regularities that expresses statistical information about cooccurre...
It is well-recognized that the main factor that hinders the applications of Association Rules (ARs) ...
International audienceIn this paper, we address the problem of the understandability and usefulness ...
ABSTRACT. In this paper, we address the problem of the usefulness of the set of discovered asso-ciat...
The problem of discovering association rules has received considerable research attention and severa...
Generalized association rules as introduced in [9] and [5] are a very important extension of the so ...
Introduction We address the question of how much space remains for performance improvement over cur...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Due to the voluminous amount of itemsets that are generated, the association rules extracted from th...