DocumentCode
1093433
Title
Discovering Frequent Generalized Episodes When Events Persist for Different Durations
Author
Laxman, Srivatsan ; Sastry, P.S. ; Unnikrishnan, K.P.
Author_Institution
Microsoft Res. Labs, Bangalore
Volume
19
Issue
9
fYear
2007
Firstpage
1188
Lastpage
1201
Abstract
This paper is concerned with the framework of frequent episode discovery in event sequences. A new temporal pattern, called the generalized episode, is defined, which extends this framework by incorporating event duration constraints explicitly into the pattern´s definition. This new formalism facilitates extension of the technique of episodes discovery to applications where data appears as a sequence of events that persist for different durations (rather than being instantaneous). We present efficient algorithms for episode discovery in this new framework. Through extensive simulations, we show the expressive power of the new formalism. We also show how the duration constraint possibilities can be used as a design choice to properly focus the episode discovery process. Finally, we briefly discuss some interesting results obtained on data from manufacturing plants of General Motors.
Keywords
data mining; General Motors; duration constraint; event sequences; frequent episode discovery; frequent generalized episodes; manufacturing plants; temporal pattern; Algorithm design and analysis; Assembly; Data mining; Frequency measurement; Internet; Manufacturing; Navigation; Web pages; Data mining; efficient algorithms; event durations; frequent episodes; sequential data;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2007.1055
Filename
4288139
Link To Document