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Stochastic time series prediction comparison with Markov and support vector machine models

Posted on:2007-10-09Degree:M.SType:Thesis
University:University of Colorado at BoulderCandidate:VanRooy, TheodoreFull Text:PDF
GTID:2448390005461583Subject:Statistics
Abstract/Summary:
A comparison between Markov Chains and the classification power of Support Vector machines will be made as to each algorithm's effectiveness at predicting highly stochastic time series. Each time series will be analyzed with a basic Markov Model, and a Support Vector Machine algorithm. In all cases we are merely trying to predict whether the time series will have a positive or negative change in the next time step. Three sets of data are examined including Google and Apple Inc. stock price, Wisconsin dairy and cow production, and Seattle monthly rain and temperature levels. The results show that though the stock market and weather are still difficult to predict, the dairy industry can be predicted with a much greater degree of certainty. Furthermore the results indicate that with further research the financial industries and weather forecasters could viably include Support Vector Machines in their arsenal.
Keywords/Search Tags:Support vector, Time series, Markov
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