The classical algorithm for mining association rules is low efficiency. Generally there is high redundancy between gained rules. To solve these problems, a new algorithm of finding non-redundant association rules based on frequent concept sets was proposed.The Hasse graph of these concepts was generated on the basis of the FP-tree. Because of the restriction of the support most Hasse graphs have losed lattice structure. During building process of the Hasse graph, all nodes were formatted according to the index of items which were found in the fequent-item head table. At the same time these nodes were selected by comparing supports. In the Hasse graph, the intention of node is frequent itemset and the extension of node is support count of th...
We propose a novel pattern tree called Pattern Count tree (PC- tree) which is a complete and compact...
International audienceAssociation rule mining and bi-clustering are data mining tasks that have beco...
Association rule mining (ARM) is the task of identifying meaningful implication rules exhibited in a...
AbstractData mining is used to deal with the huge size of the data stored in the database to extract...
Frequent pattern mining is a key problem in important data mining applications, such as the discover...
Mining frequent patterns with an FP-tree avoids costly candidate generation and repeatedly occurrenc...
The traditional association rule mining framework produces many redundant rules. The extent of redun...
The FP-tree algorithm is currently one of the fastest approaches to frequent item set mining. Studie...
Association rule learning is a popular and well researched technique for discovering interesting rel...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
FP-Growth algorithm is an association rule mining algorithm based on frequent pattern tree (FP-Tree)...
Data mining is used to discover Business Intelligence Rules from large transactional database, frequ...
In the age of information technology, the amount of accumulated data is tremendous. Extracting the a...
Abstract: We propose an association rules mining alogorithm FAS which generates the association rul...
We propose a novel pattern tree called Pattern Count tree (PC- tree) which is a complete and compact...
International audienceAssociation rule mining and bi-clustering are data mining tasks that have beco...
Association rule mining (ARM) is the task of identifying meaningful implication rules exhibited in a...
AbstractData mining is used to deal with the huge size of the data stored in the database to extract...
Frequent pattern mining is a key problem in important data mining applications, such as the discover...
Mining frequent patterns with an FP-tree avoids costly candidate generation and repeatedly occurrenc...
The traditional association rule mining framework produces many redundant rules. The extent of redun...
The FP-tree algorithm is currently one of the fastest approaches to frequent item set mining. Studie...
Association rule learning is a popular and well researched technique for discovering interesting rel...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
FP-Growth algorithm is an association rule mining algorithm based on frequent pattern tree (FP-Tree)...
Data mining is used to discover Business Intelligence Rules from large transactional database, frequ...
In the age of information technology, the amount of accumulated data is tremendous. Extracting the a...
Abstract: We propose an association rules mining alogorithm FAS which generates the association rul...
We propose a novel pattern tree called Pattern Count tree (PC- tree) which is a complete and compact...
International audienceAssociation rule mining and bi-clustering are data mining tasks that have beco...
Association rule mining (ARM) is the task of identifying meaningful implication rules exhibited in a...