This paper presents a new scalable algorithm for discovering closed frequent itemsets, a lossless and condensed representation of all the frequent itemsets that can be mined from a transactional database. Our algorithm exploits a divide-and-conquer approach and a bitwise vertical representation of the database and adopts a particular visit and partitioning strategy of the search space based on an original theoretical framework, which formalizes the problem of closed itemsets mining in detail. The algorithm adopts several optimizations aimed to save both space and time in computing itemset closures and their supports. In particular, since one of the main problems in this type of algorithms is the multiple generation of the same closed itemse...
Frequent item set mining is one of the fundamental techniques for knowledge discovery and data minin...
Efficient algorithms for mining frequent itemsets are crucial for mining association rules and for o...
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...
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...
Abstract—Mining frequent patterns refers to the discovery of the sets of items that frequently appea...
In this paper, we propose an algorithm to partition both the search space and the database for the p...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
Abstract: For a transaction database, a frequent itemset is an itemset included in at least a specif...
Abstract — The amount of data being collected is increasing rapidly. The main reason is the use of c...
[[abstract]]This paper propose a novel algorithm for mining closed frequent sequences, a scalable, c...
With the large amount of data collected in various applications, data mining has become an essential...
Mining of the complete set of frequent itemsets will lead to a huge number of itemsets. Fortunately,...
Frequent patter mining has been around ever since the data mining domain came into popularity. Howev...
Frequent item set mining is one of the fundamental techniques for knowledge discovery and data minin...
Efficient algorithms for mining frequent itemsets are crucial for mining association rules and for o...
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...
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...
Abstract—Mining frequent patterns refers to the discovery of the sets of items that frequently appea...
In this paper, we propose an algorithm to partition both the search space and the database for the p...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
Abstract: For a transaction database, a frequent itemset is an itemset included in at least a specif...
Abstract — The amount of data being collected is increasing rapidly. The main reason is the use of c...
[[abstract]]This paper propose a novel algorithm for mining closed frequent sequences, a scalable, c...
With the large amount of data collected in various applications, data mining has become an essential...
Mining of the complete set of frequent itemsets will lead to a huge number of itemsets. Fortunately,...
Frequent patter mining has been around ever since the data mining domain came into popularity. Howev...
Frequent item set mining is one of the fundamental techniques for knowledge discovery and data minin...
Efficient algorithms for mining frequent itemsets are crucial for mining association rules and for o...
Mining frequent itemsets from large dataset has a major drawback in which the explosive number of it...