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Operations research / Statistics / Mathematics / Statistical theory / Estimation theory / Bayesian statistics / Bayesian network / Query optimization / Likelihood function / Flow network / Dynamic programming / Directed acyclic graph
Date: 2009-06-11 05:20:56
Operations research
Statistics
Mathematics
Statistical theory
Estimation theory
Bayesian statistics
Bayesian network
Query optimization
Likelihood function
Flow network
Dynamic programming
Directed acyclic graph

Evaluating TOP-K Queries Over Business Processes Daniel Deutch, Tova Milo Tel Aviv University {danielde,milo}@post.tau.ac.il Abstract— A Business Process (BP) consists of some business

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