Constant vs. Time-Varying Beta Models: Further Forecast Evaluation

30 Pages Posted: 16 Aug 2010 Last revised: 9 Apr 2011

See all articles by Jonathan J. Reeves

Jonathan J. Reeves

UNSW Business School, University of New South Wales; Financial Research Network (FIRN)

Haifeng Wu

UNSW Australia Business School, School of Banking and Finance; UNSW Business School

Date Written: March 31, 2010

Abstract

Recent advances in the measurement of beta (systematic return risk) and volatility (total return risk), demonstrate substantial advantages in utilizing high frequency return data in a variety of settings. These advances in the measurement of beta and volatility have resulted in improvements in the evaluation of alternate beta and volatility forecasting approaches. In addition, more precise measurement has also led to direct modeling of the time variation of beta and volatility. Both the realized beta and volatility literature have most commonly modeled with an autoregressive process. In this paper we evaluate constant beta models, against autoregressive models of time-varying realized beta. We find that a constant beta model computed from daily returns over the last 12 months generates the most accurate quarterly forecast of beta and dominates the autoregressive time series forecasts. It also dominates (dramatically) the popular Fama-MacBeth constant beta model which uses 5 years of monthly returns.

Keywords: Finance, Prediction, Realized beta, Systematic risk, Time series

JEL Classification: G17

Suggested Citation

Reeves, Jonathan J. and Wu, Haifeng, Constant vs. Time-Varying Beta Models: Further Forecast Evaluation (March 31, 2010). 23rd Australasian Finance and Banking Conference 2010 Paper, Available at SSRN: https://ssrn.com/abstract=1659506 or http://dx.doi.org/10.2139/ssrn.1659506

Jonathan J. Reeves

UNSW Business School, University of New South Wales ( email )

Sydney, NSW 2052
Australia

Financial Research Network (FIRN) ( email )

C/- University of Queensland Business School
St Lucia, 4071 Brisbane
Queensland
Australia

Haifeng Wu (Contact Author)

UNSW Australia Business School, School of Banking and Finance ( email )

Sydney, NSW 2052
Australia
+61 2 9385 5874 (Phone)

UNSW Business School ( email )

UNSW Business School
High St
Sydney, NSW 2052
Australia

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