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Return Predictability, Economic Profits, and Model Mis-Specification: How Important are the Better Specified Models?


Yufeng Han


University of Colorado at Denver - Business School

March 2007


Abstract:     
This paper addresses the question whether investors can profit from return predictability in the real world while focusing on the impact of the data-generating process (DGP). We estimate an array of predictive models ranging from the simplest VAR to nonparametric ones and evaluate their out-of-sample portfolio performance with various predictive variables. We find that despite the significant statistical improvement, the better specified predictive models do not consistently outperform the VAR. Another striking finding is that investors appear to be better off predicting only the sign, but not the magnitude, of the market expected excess returns.

Number of Pages in PDF File: 46

Keywords: return predictability, economic value, model mis-specification, VAR, GARCH, seminonparametric model, model selection criteria

JEL Classification: G11

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Date posted: March 23, 2007  

Suggested Citation

Han, Yufeng, Return Predictability, Economic Profits, and Model Mis-Specification: How Important are the Better Specified Models? (March 2007). Available at SSRN: http://ssrn.com/abstract=972783 or http://dx.doi.org/10.2139/ssrn.972783

Contact Information

Yufeng Han (Contact Author)
University of Colorado at Denver - Business School ( email )
1475 Lawrence St.
Denver, CO 80204
United States
303-3158458 (Phone)
Feedback to SSRN (Beta)


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