Activity Number:
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128
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Type:
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Invited
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Date/Time:
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Monday, August 12, 2002 : 2:00 PM to 3:50 PM
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Sponsor:
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International Association of Mathematicial Geology (IAMG)
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Abstract - #300651 |
Title:
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Nonlinear Spatio-Temporal Statistics via Monte Carlo Methods Implemented in a JavaSpaces Distributed Computer
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Author(s):
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Timothy Haas*+
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Affiliation(s):
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University of Wisconsin, Milwaukee
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Address:
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P. O. Box 742, Milwaukee, Wisconsin, 53201, U.S.A.
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Keywords:
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spatial statistics ; geostatistics ; Monte Carlo method ; distributed computing ; JavaSpaces ; parallel computing
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Abstract:
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Coarse-grained parallel computing has the potential for allowing a variety of computationally intensive spatio-temporal statistical calculations to be performed by anyone with access to a network of 50 or more PCs. These calculations include robust estimation of nonlinear spatio-temporal statistical trend models, Monte Carlo assessment of model goodness-of-fit and parameter estimate reliability, optimal prediction of a spatio-temporal random field at many locations under asymmetric loss, and the construction of and high speed access to a distributed spatio-temporal statistical database. A distributed computer that performs these calculations can be constructed through a transaction space protocol using either JavaSpaces from Sun Microsystems or TSpaces from IBM. As an example, a nonlinear spatio-temporal trend model is estimated with Minimum Distance (a robust statistical parameter estimator) followed by a Monte Carlo computation of parameter estimate standard errors with a JavaSpaces program running on the 50 PCs contained in an instructional computer laboratory during hours that the laboratory is closed.
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