The issue addressed in this paper concerns the discovery of frequent multi-dimensional patterns from relational sequences. The great variety of applications of sequential pattern mining, such as user profiling, medicine, local weather forecast and bioinformatics, makes this problem one of the central topics in data mining. Nevertheless, sequential information may concern data on multiple dimensions and, hence, the mining of sequential patterns from multi-dimensional information results very important. In a multi-dimensional sequence each event depends on more than one dimension, such as in spatio-temporal sequences where an event may be spatially or temporally related to other events. In literature, the multi-relational data mining approach...
Previous studies on mining sequential patterns have focused on temporal patterns specified by some f...
International audienceIn this paper, we address the problem of mining sequential patterns under mult...
The approaches proposed in the past for discovering sequential patterns mainly focused on single seq...
The issue addressed in this paper concerns the discovery of frequent multi-dimensional patterns from...
Abstract:- In recent years, emerging applications introduced new constraints for data mining methods...
International audienceMulti-dimensional databases have been designed to provide decision makers with...
Sequential pattern mining is a key technique of data mining with broad applications (user behavior a...
International audienceMining sequential patterns aims at discovering correlations between events thr...
Abstract. Sequential pattern mining is an active field in the domain of knowledge discovery and has ...
Discovering associations is one of the fundamental tasks of data mining. Its aim is to automatically...
We present a novel method for mining local patterns from multi-relational data in which relationship...
Abstract. Sequential pattern mining is an approach to extract corre-lations among temporal data. Man...
Much of current data mining research is focused on discovering sets of attributes that discriminate ...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
Abstract. Sequential pattern mining is an approach to extract corre-lations among temporal data. Man...
Previous studies on mining sequential patterns have focused on temporal patterns specified by some f...
International audienceIn this paper, we address the problem of mining sequential patterns under mult...
The approaches proposed in the past for discovering sequential patterns mainly focused on single seq...
The issue addressed in this paper concerns the discovery of frequent multi-dimensional patterns from...
Abstract:- In recent years, emerging applications introduced new constraints for data mining methods...
International audienceMulti-dimensional databases have been designed to provide decision makers with...
Sequential pattern mining is a key technique of data mining with broad applications (user behavior a...
International audienceMining sequential patterns aims at discovering correlations between events thr...
Abstract. Sequential pattern mining is an active field in the domain of knowledge discovery and has ...
Discovering associations is one of the fundamental tasks of data mining. Its aim is to automatically...
We present a novel method for mining local patterns from multi-relational data in which relationship...
Abstract. Sequential pattern mining is an approach to extract corre-lations among temporal data. Man...
Much of current data mining research is focused on discovering sets of attributes that discriminate ...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
Abstract. Sequential pattern mining is an approach to extract corre-lations among temporal data. Man...
Previous studies on mining sequential patterns have focused on temporal patterns specified by some f...
International audienceIn this paper, we address the problem of mining sequential patterns under mult...
The approaches proposed in the past for discovering sequential patterns mainly focused on single seq...