Title :
Extracting Uncertain Temporal Relations from Mined Frequent Sequences
Author :
Guil, Francisco ; Marín, Roque
Author_Institution :
Dept. LyC, Univ. de Almeria
Abstract :
In this work we address an approach for solving the problem of building a temporal constraint network from the set of frequent sequences obtained after a temporal data mining process. In particular, the temporal data mining algorithm used is TSET (Guil et al., 2004), an algorithm based on the inter-transactional framework that uses a unique tree-based structure to discover frequent sequences from datasets. The model of temporal network is proposed by Hadjali et al. (2004) where each constraint is formed by three possibility values expressing the relative plausibility of each basic relations between two point-based events, that is, "before", "at the same time" and "after". We propose the use of the Shafer theory for computing the possibility values of the temporal relations involved in the network from the calculated probability masses of the sequences. The final goal is to obtain a more understandable and useful sort of knowledge from a huge volume of temporal associations resulting after the data mining process
Keywords :
constraint handling; data mining; probability; temporal databases; tree data structures; TSET algorithm; frequent sequence mining; intertransactional framework; probability masses; temporal constraint network; temporal data mining; temporal relations; tree-based structure; Association rules; Buildings; Computer networks; Data analysis; Data mining; Decision making; Humans; Probability; Transaction databases; Tree data structures;
Conference_Titel :
Temporal Representation and Reasoning, 2006. TIME 2006. Thirteenth International Symposium on
Conference_Location :
Budapest
Print_ISBN :
0-7695-2617-9
DOI :
10.1109/TIME.2006.14