Abstract The literature on excess return prediction has considered a wide array of estimation schemes, among them unrestricted and restricted regression coefficients. We consider bootstrap aggregation (bagging) to smooth parameter restrictions. Two types of restrictions are considered: positivity of the regression coefficient and positivity of the forecast. Bagging constrained estimators can have smaller asymptotic mean-squared prediction errors than forecasts from a restricted model without bagging. Monte Carlo simulations show that forecast gains can be achieved in realistic sample sizes for the stock return problem. In an empirical application using the data set of Campbell, J., and S
Bagging (bootstrap aggregating) is a smoothing method to improve predictive ability under the presen...
We find that imposing economic constraint on stock return forecasts based on the Interquartile Range...
This article explores the usefulness of bagging methods in forecasting economic time series from lin...
The literature on excess return prediction has considered a wide array of estimation schemes, among ...
We propose using the statistical method of Bagging to forecast the equity premium out-of-sample for ...
Bootstrap aggregation, or bagging, is a prominent method used in statistical inquiry suggested to im...
Bootstrap aggregating or Bagging, introduced by Breiman (1996a), has been proved to be effective to ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
This article shows that bagging can improve the forecast accuracy of time series models for realized...
Goyal and Welch (2007) argue that the historical average excess stock return forecasts future excess...
This paper provides a rigorous and detailed analysis of the methods of bagging, which addresses both...
Goyal and Welch (2007) argue that the historical average excess stock return forecasts future excess...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
The equity premium, return on equity minus return on risk-free asset, is expected to be positive. We...
Bagging (bootstrap aggregating) is a smoothing method to improve predictive ability under the presen...
We find that imposing economic constraint on stock return forecasts based on the Interquartile Range...
This article explores the usefulness of bagging methods in forecasting economic time series from lin...
The literature on excess return prediction has considered a wide array of estimation schemes, among ...
We propose using the statistical method of Bagging to forecast the equity premium out-of-sample for ...
Bootstrap aggregation, or bagging, is a prominent method used in statistical inquiry suggested to im...
Bootstrap aggregating or Bagging, introduced by Breiman (1996a), has been proved to be effective to ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
This article shows that bagging can improve the forecast accuracy of time series models for realized...
Goyal and Welch (2007) argue that the historical average excess stock return forecasts future excess...
This paper provides a rigorous and detailed analysis of the methods of bagging, which addresses both...
Goyal and Welch (2007) argue that the historical average excess stock return forecasts future excess...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
The equity premium, return on equity minus return on risk-free asset, is expected to be positive. We...
Bagging (bootstrap aggregating) is a smoothing method to improve predictive ability under the presen...
We find that imposing economic constraint on stock return forecasts based on the Interquartile Range...
This article explores the usefulness of bagging methods in forecasting economic time series from lin...