Model Uncertainty, Thick Modelling and the Predictability of Stock Returns

43 Pages Posted: 16 Sep 2003

See all articles by Marco Aiolfi

Marco Aiolfi

QMA

Carlo A. Favero

Bocconi University - Department of Economics; Bocconi University - Department of Finance; Centre for Economic Policy Research (CEPR)

Date Written: August 2003

Abstract

Recent financial research has provided evidence on the predictability of asset returns. In this Paper we consider the results contained in Pesaran-Timmerman (1995), which provided evidence on predictability of excess returns in the US stock market over the sample 1959-92. We show that the extension of the sample to the nineties weakens considerably the statistical and economic significance of the predictability of stock returns based on earlier data. We propose an extension of their framework, based on the explicit consideration of model uncertainty under rich parameterizations for the predictive models. We propose a novel methodology to deal with model uncertainty based on 'thick' modelling, i.e. considering a multiplicity of predictive models rather than a single predictive model. We show that portfolio allocations based on a thick modeling strategy systematically outperform thin modelling.

JEL Classification: C53, G11

Suggested Citation

Aiolfi, Marco and Favero, Carlo A., Model Uncertainty, Thick Modelling and the Predictability of Stock Returns (August 2003). Available at SSRN: https://ssrn.com/abstract=445740

Marco Aiolfi

QMA ( email )

100 Mulberry Street
Gateway Center 2
Newark, NJ 07102
United States

Carlo A. Favero (Contact Author)

Bocconi University - Department of Economics ( email )

Via Gobbi 5
Milan, 20136
Italy

Bocconi University - Department of Finance ( email )

Via Roentgen 1
Milano, MI 20136
Italy

HOME PAGE: http://www.igier.unibocconi.it\favero

Centre for Economic Policy Research (CEPR)

London
United Kingdom

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