Thomas Guyet and René Quiniou
Mining temporal patterns with quantitative intervals
, 4th International Workshop on Mining Complex Data , Pisa , December , 2008 , Document

Abstract In this paper we consider the problem of discovering frequent temporal patterns in a database of temporal sequences, where a temporal sequence is a set of items with associated dates and durations. Since the quantitative temporal information appears to be fundamental in many contexts, it is taken into account in the mining processes and returned as part of the extracted knowledge. To this end, we have adapted the classical APriori framework to propose an efficient algorithm based on a hyper-cube representation of temporal sequences. The extraction of quantitative temporal information is performed using a density estimation of the distribution of event intervals from the temporal sequences. An evaluation on synthetic data sets shows that the proposed algorithm can robustly extract frequent temporal patterns with quantitative temporal extents.


This web site is maintained by René Quiniou using the Weave system
from the Caravel project: http://www-caravel.inria.fr.
Last modification: 10-07-2011 09:54:25