Average Case Analysis in Database Problems
Oleg Seleznjev and
Bernhard Thalheim
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Oleg Seleznjev: Umeå University
Bernhard Thalheim: Brandenburg University of Technology at Cottbus
Methodology and Computing in Applied Probability, 2003, vol. 5, issue 4, 395-418
Abstract:
Abstract In a variety of applications ranging from environmental and health sciences to bioinformatics, it is essential that data collected in large databases are generated stochastically. This states qualitatively new problems both for statistics and for computer science. Namely, instead of deterministic (usually worst case) analysis, the average case analysis is needed for many standard database problems. Since both stochastic and deterministic methods and notation are used it causes additional difficulties for an investigation of such problems and for an exposition of results. We consider a general class of probabilistic models for databases and study a few problems in a probabilistic framework. In order to demonstrate the general approach, the problems for systems of database constraints (keys, functional dependencies and related) are investigated in more detail. Our approach is based on consequent using Rényi entropy as a main characteristic of uncertainty of distribution and Poisson approximation (Stein–Chen technique) of the corresponding probabilities.
Keywords: random database; tests; keys; extreme values; Rényi entropy; Poisson (Stein–Chen) approximation (search for similar items in EconPapers)
Date: 2003
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DOI: 10.1023/A:1026258911996
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