Pattern discovery in large binary relations has been extensively studied. An emblematic success in this area concerns frequent itemset mining and its post-processing that derives association rules. In this case, we mine binary relations that encode whether some properties are satisfied or not by some objects. It is however clear that many datasets correspond to n-ary relations where n > 2. For example, adding spatial and/or temporal dimensions (location and/or time when the properties are satisfied by the objects) leads to the 4-ary relation Objects x Properties x Places x Times. Therefore, we study the generalization of association rule mining within arbitrary n-ary relations: the datasets are now Boolean tensors and not only Boolean matri...
Knowledge Discovery in Databases aims to exploit hudge volume of data to extract new and potentially...
Relational Analysis is concerned with the analysis of binary relations and their applicationsin diff...
Association rules are generally recognized as a highly valuable type of regularities and various alg...
Pattern discovery in large binary relations has been extensively studied. An emblematic success in t...
Le calcul de motifs dans de grandes relations binaires a été très étudié. Un succès emblématique con...
International audiencePopular data mining methods support knowledge discovery from patterns that hol...
International audienceGraph mining methods have become quite popular and a timely challenge is to di...
The datasets describing objects with Boolean properties are binary relations, i.e., 0/1 matrices. In...
We present a novel method for mining local patterns from multi-relational data in which relationship...
International audienceSet pattern discovery from binary relations has been extensively studied durin...
International audienceSet pattern discovery from binary relations has been extensively studied durin...
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...
National audienceMany complete and efficient algorithms for frequent closed set mining are now avail...
The extraction of knowledge in databases, also called data mining, is the process of extracting non-...
Knowledge Discovery in Databases aims to exploit hudge volume of data to extract new and potentially...
Relational Analysis is concerned with the analysis of binary relations and their applicationsin diff...
Association rules are generally recognized as a highly valuable type of regularities and various alg...
Pattern discovery in large binary relations has been extensively studied. An emblematic success in t...
Le calcul de motifs dans de grandes relations binaires a été très étudié. Un succès emblématique con...
International audiencePopular data mining methods support knowledge discovery from patterns that hol...
International audienceGraph mining methods have become quite popular and a timely challenge is to di...
The datasets describing objects with Boolean properties are binary relations, i.e., 0/1 matrices. In...
We present a novel method for mining local patterns from multi-relational data in which relationship...
International audienceSet pattern discovery from binary relations has been extensively studied durin...
International audienceSet pattern discovery from binary relations has been extensively studied durin...
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...
National audienceMany complete and efficient algorithms for frequent closed set mining are now avail...
The extraction of knowledge in databases, also called data mining, is the process of extracting non-...
Knowledge Discovery in Databases aims to exploit hudge volume of data to extract new and potentially...
Relational Analysis is concerned with the analysis of binary relations and their applicationsin diff...
Association rules are generally recognized as a highly valuable type of regularities and various alg...