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"When risk-factor loadings are time-varying and unobservable, investors are forced to form beliefs about the levels of their loadings. The learning process involved in forming these beliefs has normative implications for asset-pricing tests. This paper develops an equilibrium model of learning about time-varying beta. In the model, the capital asset pricing model (CAPM) works for investors' probability distribution. However, mis-pricing can be observed if econometricians estimate betas without accounting for the investors' learning process. The empirical implication for asset-pricing tests is that the factor loadings must be estimated as latent variables. We provide an empirical application of this methodology to the cross section of returns on ten book-to-market and ten size-sorted portfolios. For these assets, the data do not reject a learning-augmented version of CAPM. This model performs better than other common empirical specifications, including the Fama-French three-factor model"--Federal Reserve Bank of New York web site.
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Learning about beta: a new look at CAPM tests
2004, Federal Reserve Bank of New York
Electronic resource
in English
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Book Details
Edition Notes
Includes bibliographical references.
Title from PDF file as viewed on 1/12/2005.
System requirements: Adobe Acrobat Reader.
Mode of access: World Wide Web.
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December 13, 2020 | Edited by MARC Bot | import existing book |
August 4, 2012 | Edited by VacuumBot | Updated format '[electronic resource] :' to 'Electronic resource' |
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