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A stochastic Markov chain approach for tennis: Monte Carlo simulation and modeling

Posted on:2013-02-05Degree:Ph.DType:Dissertation
University:University of Southern CaliforniaCandidate:Aslam, KamranFull Text:PDF
GTID:1457390008463386Subject:Applied Mathematics
Abstract/Summary:
This dissertation describes the computational formulation of probability density functions (pdfs) that facilitate head-to-head match simulations in tennis along with ranking systems developed from their use. A background on the statistical method used to develop the pdfs , the Monte Carlo method, and the resulting rankings are included along with a discussion on ranking methods currently being used both in professional sports and in other applications. Using an analytical theory developed by Newton and Keller in [34] that defines a tennis player's probability of winning a game, set, match and single elimination tournament, a computational simulation has been developed in Matlab that allows further modeling not previously possible with the analytical theory alone. Such experimentation consists of the exploration of non-iid effects, considers the concept the varying importance of points in a match and allows an unlimited number of matches to be simulated between unlikely opponents. The results of these studies have provided pdfs that accurately model an individual tennis player's ability along with a realistic, fair and mathematically sound platform for ranking them.
Keywords/Search Tags:Tennis
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