Combining forecasts from nested models

Combining forecasts from nested models
Todd E. Clark, Todd E. Clark
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Last edited by MARC Bot
December 17, 2020 | History

Combining forecasts from nested models

Motivated by the common finding that linear autoregressive models forecast better than models that incorporate additional information, this paper presents analytical, Monte Carlo, and empirical evidence on the effectiveness of combining forecasts from nested models. In our analytics, the unrestricted model is true, but as the sample size grows, the DGP converges to the restricted model. This approach captures the practical reality that the predictive content of variables of interest is often low. We derive MSE-minimizing weights for combining the restricted and unrestricted forecasts. In the Monte Carlo and empirical analysis, we compare the effectiveness of our combination approach against related alternatives, such as Bayesian estimation.

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Edition Availability
Cover of: Combining forecasts from nested models
Combining forecasts from nested models
2006, Research Division, Federal Reserve Bank of Kansas City
electronic resource / in English
Cover of: Combining forecasts from nested models
Combining forecasts from nested models
2006, Research Division, Federal Reserve Bank of Kansas City
electronic resource / in English

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Book Details


Edition Notes

Title from PDF file (viewed on Mar. 29, 2006).

"March 2006."

Includes bibliographical references.

Also available in print.

System requirements: Adobe Acrobat Reader.

Mode of access: World Wide Web.

Published in
Kansas City [Mo.]
Series
RWP -- 06-02, Research working paper (Federal Reserve Bank of Kansas City : Online) -- 06-02.

Classifications

Library of Congress
HB1

The Physical Object

Format
[electronic resource] /

ID Numbers

Open Library
OL31758781M
LCCN
2006615465

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