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"We present a simulation-based method for solving discrete-time portfolio choice problems involving non-standard preferences, a large number of assets with arbitrary return distribution, and, most importantly, a large number of state variables with potentially path-dependent or non-stationary dynamics. The method is flexible enough to accommodate intermediate consumption, portfolio constraints, parameter and model uncertainty, and learning. We first establish the properties of the method for the portfolio choice between a stock index and cash when the stock returns are either iid or predictable by the dividend yield. We then explore the problem of an investor who takes into account the predictability of returns but is uncertain about the parameters of the data generating process. The investor chooses the portfolio anticipating that future data realizations will contain useful information to learn about the true parameter values"--National Bureau of Economic Research web site.
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Subjects
Portfolio management, Econometric modelsEdition | Availability |
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A simulation approach to dynamic portfolio choice with an application to learning about return predictability
2004, National Bureau of Economic Research
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 1/13/2005.
System requirements: Adobe Acrobat Reader.
Mode of access: World Wide Web.
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History
- Created April 1, 2008
- 4 revisions
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December 13, 2020 | Edited by MARC Bot | import existing book |
July 31, 2012 | Edited by VacuumBot | Updated format '[electronic resource] /' to 'Electronic resource' |
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 |