Data is typically complex and relational. Therefore, the development of relational data mining methods is an in- creasingly active topic of research. Recent work has resulted in new formalisations of patterns in relational data and in a way to quantify their interestingness in a subjective manner, taking into account the data analyst’s prior beliefs about the data. Yet, a scalable algorithm to find such most interesting patterns is lacking. We introduce a new algorithm based on two notions: (1) the use of Constraint Programming, which results in a notably shorter development time, faster runtimes, and more flexibility for extensions such as branch-and-bound search; and (2), the direct search for the most interesting patterns only, instead o...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
In this paper, we study the problem of discovering interesting patterns in large volumes of data. Pa...
International audienceGradual patterns highlight covariations of attributes of the form " The more/l...
Data is typically complex and relational. Therefore, the development of relational data mining metho...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
Abstract. In this paper we present ConQueSt, a constraint based querying system devised with the aim...
Abstract—Local pattern mining methods are fragmented along two dimensions: the pattern syntax, and t...
Nowadays, relational databases have become the de facto standard to store large quantities of data. ...
Pattern set mining entails discovering groups of frequent itemsets that represent potentially releva...
Finding small sets of interesting patterns is an important challenge in pattern mining. In this pape...
Pattern mining is an enumeration technique used to discover knowledge from databases. This Habilitat...
We present a novel method for mining local patterns from multi-relational data in which relationship...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
Data mining is an important real-life application for businesses. It is critical to find efficient w...
Inductive database systems typically include algorithms for mining and querying frequent patterns an...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
In this paper, we study the problem of discovering interesting patterns in large volumes of data. Pa...
International audienceGradual patterns highlight covariations of attributes of the form " The more/l...
Data is typically complex and relational. Therefore, the development of relational data mining metho...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
Abstract. In this paper we present ConQueSt, a constraint based querying system devised with the aim...
Abstract—Local pattern mining methods are fragmented along two dimensions: the pattern syntax, and t...
Nowadays, relational databases have become the de facto standard to store large quantities of data. ...
Pattern set mining entails discovering groups of frequent itemsets that represent potentially releva...
Finding small sets of interesting patterns is an important challenge in pattern mining. In this pape...
Pattern mining is an enumeration technique used to discover knowledge from databases. This Habilitat...
We present a novel method for mining local patterns from multi-relational data in which relationship...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
Data mining is an important real-life application for businesses. It is critical to find efficient w...
Inductive database systems typically include algorithms for mining and querying frequent patterns an...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
In this paper, we study the problem of discovering interesting patterns in large volumes of data. Pa...
International audienceGradual patterns highlight covariations of attributes of the form " The more/l...