We investigate the problem of mining closed sets in multi-relational databases. Previous work introduced different semantics and associated algorithms for mining closed sets in multi-relational databases. However, insight into the implications of semantic choices and the relationships among them was still lacking. Our investigation shows that the semantic choices are important because they imply different properties, which in turn affect the range of algorithms that can mine for such sets. Of particular interest is the question whether the seminal LCM algorithm by Uno et al. can be upgraded towards multi-relational problems. LCM is attractive since its run time is linear in the number of closed sets and it does not need to store outputs in ...
National audienceMany complete and efficient algorithms for frequent closed set mining are now avail...
Relational databases are the most popular repository for structured data, and are thus one of the ri...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
We investigate the problem of mining closed sets in multi-relational databases. Previous work in-tro...
Recent theoretical insights have led to the introduction of efficient algorithms for mining closed i...
International audienceRecent theoretical insights have led to the introduction of efficient algorith...
Abstract. We consider the problem of mining closed patterns from multi-relational databases in a dis...
Multi-relational data mining algorithms search a large hypothesis space in order to find a suitable ...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
textabstractAn important aspect of data mining algorithms and systems is that they should scale well...
An important aspect of data mining algorithms and systems is that they should scale well to large da...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
Set pattern discovery from binary relations has been exten-sively studied during the last decade. In...
International audienceFor the last decade, set pattern discovery from binary relations has been stu...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, a lossless an...
National audienceMany complete and efficient algorithms for frequent closed set mining are now avail...
Relational databases are the most popular repository for structured data, and are thus one of the ri...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
We investigate the problem of mining closed sets in multi-relational databases. Previous work in-tro...
Recent theoretical insights have led to the introduction of efficient algorithms for mining closed i...
International audienceRecent theoretical insights have led to the introduction of efficient algorith...
Abstract. We consider the problem of mining closed patterns from multi-relational databases in a dis...
Multi-relational data mining algorithms search a large hypothesis space in order to find a suitable ...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
textabstractAn important aspect of data mining algorithms and systems is that they should scale well...
An important aspect of data mining algorithms and systems is that they should scale well to large da...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
Set pattern discovery from binary relations has been exten-sively studied during the last decade. In...
International audienceFor the last decade, set pattern discovery from binary relations has been stu...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, a lossless an...
National audienceMany complete and efficient algorithms for frequent closed set mining are now avail...
Relational databases are the most popular repository for structured data, and are thus one of the ri...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...