Previous study has shown that mining frequent patterns with length-decreasing support constraint is very helpful in removing some uninteresting patterns based on the observation that short patterns will tend to be interesting if they have a high support, whereas long patterns can still be very interesting even if their support is relatively low. However, a large number of non-closed(i.e., redundant) patterns can still not be filtered out by simply applying the length-decreasing support constraint. As a result, a more desirable pattern discovery task could be mining closed patterns under the length-decreasing support constraint. In this paper we study how to push deeply the length-decreasing support constraint into closed itemset mining, wh...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
The output of boolean association rule mining algo-rithms is often too large for manual examination....
The output of boolean association rule mining algorithms is often too large for manual examination. ...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Mining frequent itemsets from large dataset has a major drawback in which the explosive number of it...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, a lossless an...
Frequent itemset mining is today one of the most popular data mining techniques. Its application is,...
In recent years, various constrained frequent pattern mining problem formulations and associated alg...
Pattern Mining is one of the most researched topics in the data mining community. Literally hundreds...
International audienceFrequent-regular pattern mining has attracted recently many works. Most of the...
Abstract- Past observations have shown that a frequent item set mining algorithm are purported to mi...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
Over the years, a variety of algorithms for finding frequent itemsets in very large transaction data...
The generators and the unique closed pattern of an equivalence class of itemsets share a common set ...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
The output of boolean association rule mining algo-rithms is often too large for manual examination....
The output of boolean association rule mining algorithms is often too large for manual examination. ...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Mining frequent itemsets from large dataset has a major drawback in which the explosive number of it...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, a lossless an...
Frequent itemset mining is today one of the most popular data mining techniques. Its application is,...
In recent years, various constrained frequent pattern mining problem formulations and associated alg...
Pattern Mining is one of the most researched topics in the data mining community. Literally hundreds...
International audienceFrequent-regular pattern mining has attracted recently many works. Most of the...
Abstract- Past observations have shown that a frequent item set mining algorithm are purported to mi...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
Over the years, a variety of algorithms for finding frequent itemsets in very large transaction data...
The generators and the unique closed pattern of an equivalence class of itemsets share a common set ...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
The output of boolean association rule mining algo-rithms is often too large for manual examination....
The output of boolean association rule mining algorithms is often too large for manual examination. ...