One-node quadrature beats monte carlo

a generalized stochastic simulation algorithm

One-node quadrature beats monte carlo
Kenneth L. Judd, Kenneth L. Ju ...
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Last edited by MARC Bot
October 17, 2020 | History

One-node quadrature beats monte carlo

a generalized stochastic simulation algorithm

"In conventional stochastic simulation algorithms, Monte Carlo integration and curve fitting are merged together and implemented by means of regression. We perform a decomposition of the solution error and show that regression does a good job in curve fitting but a poor job in integration, which leads to low accuracy of solutions. We propose a generalized notion of stochastic simulation approach in which integration and curve fitting are separated. We specifically allow for the use of deterministic (quadrature and monomial) integration methods which are more accurate than the conventional Monte Carlo method. We achieve accuracy of solutions that is orders of magnitude higher than that of the conventional stochastic simulation algorithms"--National Bureau of Economic Research web site.

Publish Date
Language
English

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Edition Availability
Cover of: One-node quadrature beats monte carlo
One-node quadrature beats monte carlo: a generalized stochastic simulation algorithm
2011, National Bureau of Economic Research
Electronic resource in English

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Book Details


Edition Notes

Title from PDF file as viewed on 4/21/2011.

Includes bibliographical references.

Also available in print.

System requirements: Adobe Acrobat Reader.

Mode of access: World Wide Web.

Published in
Cambridge, MA
Series
NBER working paper series -- working paper 16708, Working paper series (National Bureau of Economic Research : Online) -- working paper no. 16708.

Classifications

Library of Congress
HB1

The Physical Object

Format
Electronic resource

ID Numbers

Open Library
OL24845891M
LCCN
2011655936

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October 17, 2020 Edited by MARC Bot import existing book
July 26, 2011 Created by LC Bot import new book