Stochastic Processes and Temporal Data Mining
Date issued
August 2007
From page
183
To page
190
Subjects
Consistency of temporal rules stochastic limit theory stochastic
processes temporal data mining temporal logic formalism
Abstract
This article tries to give an answer to a fundamental question in temporal data mining: ”Under what conditions a temporal rule extracted from up-to-date temporal data keeps its confidence/support for future data”. A possible solution is given by using, on the one hand, a temporal logic formalism which allows the definition of the main notions (event, temporal rule, support, confidence) in a formal way and, on the other hand, the stochastic limit theory. Under this probabilistic temporal framework, the equivalence between the existence of the support of a temporal rule and the law of large numbers is systematically analysed.
Notes
, 2007
Event name
KDD-2007. 13th ACM SIGKDD International Confrerence on Knowledge Discovery and Data Mining
Location
San Jose, USA
Later version
http://dl.acm.org/citation.cfm?id=1281215
Publication type
conference paper
