Market Timing And Model Uncertainty: An Exploratory Study For The Swiss Stock Market

被引:0
作者
David Rey
机构
[1] University of Basel,Department of Finance, Wirtschaftswissenschaftliches Zentrum (WWZ)
来源
Financial Markets and Portfolio Management | 2005年 / 19卷 / 3期
关键词
Predictive Variable; Posterior Probability; Stock Market; Model Uncertainty; Parameter Uncertainty;
D O I
10.1007/s11408-005-4695-z
中图分类号
学科分类号
摘要
We use statistical model selection criteria and Avramov's (2002) Bayesian model averaging approach to analyze the sample evidence of stock market predictability in the presence of model uncertainty. The empirical analysis for the Swiss stock market is based on a number of predictive variables found important in previous studies of return predictability. We find that it is difficult to discard any predictive variable as completely worthless, but that the posterior probabilities of the individual forecasting models as well as the cumulative posterior probabilities of the predictive variables are time-varying. Moreover, the estimates of the posterior probabilities are not robust to whether the predictive variables are stochastically detrended or not. The decomposition of the variance of predicted future returns into the components parameter uncertainty, model uncertainty, and the uncertainty attributed to forecast errors indicates that the respective contributions strongly depend on the time period under consideration and the initial values of the predictive variables. In contrast to AVRAMOV (2002), model uncertainty is generally not more important than parameter uncertainty. Finally, we demonstrate the implications of model uncertainty for market timing strategies. In general, our results do not indicate any reliable out-of-sample return predictability. Among the predictive variables, the dividend-price ratio exhibits the worst external validation on average. Again in contrast to AVRAMOV (2002), our analysis suggests that the out-of-sample performance of the Bayesian model averaging approach is not superior to the statistical model selection criteria. Consequently, model averaging does not seem to help improve the performance of the resulting short-term market timing strategies.
引用
收藏
页码:239 / 260
页数:21
相关论文
共 82 条
[1]  
Akaike H.(1974)A New Look at the Statistical Model Identification IEEE Transactions on Automatic Control, AC 19 716-723
[2]  
Akgiray V.(1989)Conditional Heteroskedasticity in Time Series of Stock Returns: Evidence and Forecasts Journal of Business 62 55-80
[3]  
Amihud Y.(2004)Predictive Regressions: A Reduced-Bias Estimation Method Journal of Financial and Quantitative Analysis 39 813-841
[4]  
Hurvich C. M.(2002)Stock Return Predictability and Model Uncertainty Journal of Financial Economics 64 423-458
[5]  
Avramov D.(2000)The Equity Share in New Issues and Aggregate Stock Returns Journal of Finance 55 2219-2257
[6]  
Baker M.(2000)Investing for the Long Run when Returns are Predictable Journal of Finance 55 225-264
[7]  
Wurgler J.(2001)Editor's Foreword to the Special Issue: ‘On the Predictability of Asset Returns' Journal of Empirical Finance 8 451-457
[8]  
Barberis N.(1999)Implementing Statistical Criteria to Select Return Forecasting Models: What Do We Learn? Review of Financial Studies 12 405-428
[9]  
Bekaert G.(1993)Is the Ex-Ante Risk Premium Always Positive? Journal of Financial Economics 34 387-408
[10]  
Bossaerts P.(1997)Strategic Asset Allocation Journal of Economic Dynamics and Control 21 1377-1403