Improving forecast accuracy by combining recursive and rolling forecasts

Improving forecast accuracy by combining recu ...
Todd E. Clark, Todd E. Clark
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Last edited by MARC Bot
December 11, 2020 | History

Improving forecast accuracy by combining recursive and rolling forecasts

"This paper presents analytical, Monte Carlo, and empirical evidence on the effectiveness of combining recursive and rolling forecasts when linear predictive models are subject to structural change. We first provide a characterization of the bias-variance tradeoff faced when choosing between either the recursive and rolling schemes or a scalar convex combination of the two. From that, we derive pointwise optimal, time-varying and data-dependent observation windows and combining weights designed to minimize mean square forecast error. We then proceed to consider other methods of forecast combination, including Bayesian methods that shrink the rolling forecast to the recursive and Bayesian model averaging. Monte Carlo experiments and several empirical examples indicate that although the recursive scheme is often difficult to beat, when gains can be obtained, some form of shrinkage can often provide improvements in forecast accuracy relative to forecasts made using the recursive scheme or the rolling scheme with a fixed window width"--Federal Reserve Bank of Kansas City web site.

Publish Date
Language
English

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Edition Availability
Cover of: Improving forecast accuracy by combining recursive and rolling forecasts
Improving forecast accuracy by combining recursive and rolling forecasts
2004, Federal Reserve Bank of Kansas City
Electronic resource in English

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Book Details


Edition Notes

Also available in print.
Includes bibliographical references.
Title from PDF file as viewed on 11/10/2004.
System requirements: Adobe Acrobat Reader.
Mode of access: World Wide Web.

Published in
Kansas City [Mo.]
Series
RWP ;, 04-10, Research working paper (Federal Reserve Bank of Kansas City : Online) ;, 04-10.

Classifications

Library of Congress
HB1

The Physical Object

Format
Electronic resource

ID Numbers

Open Library
OL3389937M
LCCN
2004616685

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Download catalog record: RDF / JSON / OPDS | Wikipedia citation
December 11, 2020 Edited by MARC Bot import existing book
July 31, 2012 Edited by VacuumBot Updated format '[electronic resource] /' to 'Electronic resource'
December 12, 2009 Edited by WorkBot link works
October 31, 2008 Edited by ImportBot add URIs from original MARC record
April 1, 2008 Created by an anonymous user Imported from Scriblio MARC record