This article shows that bagging can improve the forecast accuracy of time series models for realized volatility. We consider 23 stocks from the Dow Jones Industrial Average over the sample period 1995 to 2005 and employ two different forecast models, a log-linear specification in the spirit of the heterogeneous autoregressive model and a nonlinear specification with logistic transitions. Both forecast model types benefit from bagging, in particular in the 1990s part of our sample. The log-linear specification shows larger improvements than the nonlinear model. Bagging the log-linear model yields the highest forecast accuracy on our sample.Bagging, Boostrap, HAR, Realized volatility,
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
Abstract The literature on excess return prediction has considered a wide array of estimation scheme...
This article explores the usefulness of bagging methods in forecasting economic time series from lin...
This paper explores the usefulness of bagging methods in forecasting economic time series from linea...
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 ...
This paper provides a rigorous and detailed analysis of the methods of bagging, which addresses both...
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 ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
Using intraday data on the common stocks of International Business Machines (IBM), we incorporate la...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
Bagging (bootstrap aggregating) is a smoothing method to improve predictive ability under the presen...
<div><p>Many researchers documented that the stock market data are nonstationary and nonlinear time ...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
Abstract The literature on excess return prediction has considered a wide array of estimation scheme...
This article explores the usefulness of bagging methods in forecasting economic time series from lin...
This paper explores the usefulness of bagging methods in forecasting economic time series from linea...
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 ...
This paper provides a rigorous and detailed analysis of the methods of bagging, which addresses both...
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 ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
Using intraday data on the common stocks of International Business Machines (IBM), we incorporate la...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
Bagging (bootstrap aggregating) is a smoothing method to improve predictive ability under the presen...
<div><p>Many researchers documented that the stock market data are nonstationary and nonlinear time ...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
We propose a new family of easy-to-implement realized volatility based forecasting models. The model...
Abstract The literature on excess return prediction has considered a wide array of estimation scheme...