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International Stock Return Predictability under Model Uncertainty

International Stock Return Predictability under Model Uncertainty
Author: Andreas Schrimpf
Publisher:
Total Pages: 46
Release: 2010
Genre:
ISBN:

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This paper examines return predictability when the investor is uncertain about the right state variables. A novel feature of the model averaging approach used in this paper is to account for finite-sample bias of the coefficients in the predictive regressions. Drawing on an extensive international dataset, we find that interest-rate related variables are usually among the most prominent predictive variables, whereas valuation ratios perform rather poorly. Yet, predictability of market excess returns weakens substantially, once model uncertainty is accounted for. We document notable differences in the degree of in-sample and out-of-sample predictability across different stock markets. Overall, these findings suggest that return predictability is neither a uniform, nor a universal feature across international capital markets.


Stock Return Predictability and Model Uncertainty

Stock Return Predictability and Model Uncertainty
Author: Doron Avramov
Publisher:
Total Pages: 43
Release: 2002
Genre:
ISBN:

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We use Bayesian model averaging to analyze the sample evidence on return predictability in the presence of uncertainty about the return forecasting model. The analysis reveals in-sample and out-of-sample predictability, and shows that the out-of-sample performance of the Bayesian approach is superior to that of model selection criteria. Our exercises find that term premium and market risk premium are relatively robust predictors. Moreover, small-cap value stocks appear more predictable than large-cap growth stocks. We also investigate the implications of model uncertainty from investment management perspectives. The analysis shows that model uncertainty is more important than estimation risk. Finally, asset allocations in the presence of estimation risk exhibit sensitivity to whether model uncertainty is incorporated or ignored.


Stock Return Predictability

Stock Return Predictability
Author: Martijn Cremers
Publisher:
Total Pages: 36
Release: 2002
Genre:
ISBN:

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Attempts to characterize stock return predictability have generated a plethora of papers documenting the ability of various variables to explain conditional expected returns. However, there is little consensus on what the important conditioning variables are, giving rise to a great deal of model uncertainty and data snooping fears. In this paper, we introduce a new methodology that explicitly takes the model uncertainty into account by comparing all possible models simultaneously and in which the priors are calibrated to reflect economically meaningful prior information. Therefore, our approach minimizes data snooping given the information set and the priors. We compare the prior views of a skeptic and a confident investor. The data imply posterior probabilities that are in general more supportive of stock return predictability than the priors for both types of investors, over a wide range of prior views. Furthermore, the stalwarts such as dividends and past returns do not perform well. The out-of- sample results for the Bayesian average models show improved forecasts relative to the classical statistical model selection methods, are consistent with the in-sample results and show some, albeit small, evidence of predictability.


Market Timing and Model Uncertainty

Market Timing and Model Uncertainty
Author: David M. Rey
Publisher:
Total Pages:
Release: 2005
Genre:
ISBN:

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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.


Essays on the Predictability and Volatility of Returns in the Stock Market

Essays on the Predictability and Volatility of Returns in the Stock Market
Author: Ruojun Wu
Publisher:
Total Pages: 137
Release: 2008
Genre: Bayesian statistical decision theory
ISBN:

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This dissertation studies the effect of parameter uncertainty on the return predictability and volatility of the stock market. The first two chapters focus on the decomposition of market volatility, and the third chapter studies the return predictability. When facing imperfect information, the investors tend to form a learning scheme that encompasses both historical data and prior beliefs. In the variance decomposition framework, the introducing of learning directly impacts the way that return forecasts are revised and consequently the relative component of market volatility based on these forecasts, namely the price movements from revision on future discount rates and those from future cash flows. According to the empirical study in Chapter 1, the former is not necessarily the major driving force of market volatility, which provides an alternative view on what moves stock prices. Learning is modeled and estimated by Bayesian method. Chapter 2 follows the topic in Chapter 1 and studies the role of persistent state variables in return decomposition in order to provide more robust inference on variance decomposition. In Chapter 3 we propose to utilize theoretical constraints to help predict market returns when in sample data is very noisy and creates model uncertainty for the investors. The constraints are also incorporated by Bayesian method. We show in the out-of-sample forecast experiment that models with theoretical constraints produce better forecasts.


Stock Return Prediction with Fully Flexible Models and Coefficients

Stock Return Prediction with Fully Flexible Models and Coefficients
Author: Joseph Byrne
Publisher:
Total Pages: 43
Release: 2016
Genre:
ISBN:

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We evaluate stock return predictability using a fully flexible Bayesian framework, which explicitly allows for different degrees of time-variation in coefficients and in forecasting models. We believe that asset return predictability can evolve quickly or slowly, based upon market conditions, and we should account for this. Our approach has superior out-of-sample predictive performance compared to the historical mean, from a statistical and economic perspective. We also find that our model statistically dominates its nested combination methods, including equal weighted models, Bayesian model averaging (BMA) and Dynamic model averaging (DMA). By decomposing sources of prediction uncertainty into five parts, we uncover that our fully flexible approach more precisely identifies the time-variation in coefficients and the combination method we should apply, leading to mitigation of estimation risk and forecasting improvements. Finally, we relate predictability to the business cycle.


Specification Searches

Specification Searches
Author: E. E. Leamer
Publisher:
Total Pages: 392
Release: 1978-04-24
Genre: Mathematics
ISBN:

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Offers a radically new approach to inference with nonexperimental data when the statistical model is ambiguously defined. Examines the process of model searching and its implications for inference. Identifies six different varieties of specification searches, discussing the inferential consequences of each in detail.


International Stock Return Predictability

International Stock Return Predictability
Author: Pierre Giot
Publisher:
Total Pages: 65
Release: 2016
Genre:
ISBN:

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The predictability of stock returns in ten countries is assessed taking into account recently developed out-of-sample statistical tests and risk-adjusted metrics. Predictive variables include both valuation ratios and interest rate variables. Out-of-sample predictive power is found to be greatest for the short-term and long-term interest rate variables. Given the importance of trading profitability in assessing market efficiency, we show that such statistical predictive power is economically meaningless across countries and investment horizons. All in all, no common pattern of stock return predictability emerges across countries, be it on statistical or economic grounds.