Efficient prediction of excess returns

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Efficient prediction of excess returns
Jon Faust
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Last edited by MARC Bot
December 22, 2020 | History

Efficient prediction of excess returns

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"It is well known that augmenting a standard linear regression model with variables that are correlated with the error term but uncorrelated with the original regressors will increase asymptotic efficiency of the original coefficients. We argue that in the context of predicting excess returns, valid augmenting variables exist and are likely to yield substantial gains in estimation efficiency and, hence, predictive accuracy. The proposed augmenting variables are ex post measures of an unforecastable component of excess returns: ex post errors from macroeconomic survey forecasts and the surprise components of asset price movements around macroeconomic news announcements. These "surprises" cannot be used directly in forecasting--they are not observed at the time that the forecast is made--but can nonetheless improve forecasting accuracy by reducing parameter estimation uncertainty. We derive formal results about the benefits and limits of this approach and apply it to standard examples of forecasting excess bond and equity returns. We find substantial improvements in out-of-sample forecast accuracy for standard excess bond return regressions; gains for forecasting excess stock returns are much smaller"--National Bureau of Economic Research web site.

Publish Date
Language
English

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Cover of: Efficient prediction of excess returns
Efficient prediction of excess returns
2008, National Bureau of Economic Research
Electronic resource in English

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Book Details


Edition Notes

Title from PDF file as viewed on 7/23/2008.

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 14169, Working paper series (National Bureau of Economic Research : Online) -- working paper no. 14169.

Classifications

Library of Congress
HB1

The Physical Object

Format
Electronic resource

ID Numbers

Open Library
OL17088570M
LCCN
2008610988

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Download catalog record: RDF / JSON / OPDS | Wikipedia citation
December 22, 2020 Edited by MARC Bot import existing book
July 31, 2012 Edited by VacuumBot Updated format '[electronic resource] /' to 'Electronic resource'
December 15, 2009 Edited by WorkBot link works
October 28, 2008 Edited by ImportBot Found a matching Library of Congress MARC record
September 27, 2008 Created by ImportBot Imported from Library of Congress MARC record