DocumentCode :
984350
Title :
Discovering expressive process models by clustering log traces
Author :
Greco, Giuseppe ; Guzzo, A. ; Pontieri, L. ; Sacca, D.
Author_Institution :
Dept. of Math., Calabria Univ.
Volume :
18
Issue :
8
fYear :
2006
Firstpage :
1010
Lastpage :
1027
Abstract :
Process mining techniques have recently received notable attention in the literature; for their ability to assist in the (re)design of complex processes by automatically discovering models that explain the events registered in some log traces provided as input. Following this line of research, the paper investigates an extension of such basic approaches, where the identification of different variants for the process is explicitly accounted for, based on the clustering of log traces. Indeed, modeling each group of similar executions with a different schema allows us to single out "conformant" models, which, specifically, minimize the number of modeled enactments that are extraneous to the process semantics. Therefore, a novel process mining framework is introduced and some relevant computational issues are deeply studied. As finding an exact solution to such an enhanced process mining problem is proven to require high computational costs, in most practical cases, a greedy approach is devised. This is founded on an iterative, hierarchical, refinement of the process model, where, at each step, traces sharing similar behavior patterns are clustered together and equipped with a specialized schema. The algorithm guarantees that each refinement leads to an increasingly sound mDdel, thus attaining a monotonic search. Experimental results evidence the validity of the approach with respect to both effectiveness and scalability
Keywords :
data mining; pattern classification; pattern clustering; workflow management software; expressive process model; log trace clustering; process mining technique; Clustering algorithms; Companies; Computational efficiency; Computer Society; Customer relationship management; Data mining; Enterprise resource planning; Iterative algorithms; Management information systems; Supply chain management; Process mining; association rules.; classification; clustering; data mining; workflow management;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2006.123
Filename :
1644726
Link To Document :
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