自回归过程中的多步预测

MULTISTEP PREDICTION IN AUTOREGRESSIVE PROCESSES

Econometric Theory · 2003
被引 124 · 同刊同年前 4%
人大 A-ABS 4

中文导读

研究了自回归过程中两种多步预测方法(插件法和直接法)的均方预测误差,在平稳条件下推导了渐近表达式并比较了性能,还扩展到含确定性时间趋势的模型。

Abstract

In this paper, two competing types of multistep predictors, i.e., plug-in and direct predictors, are considered in autoregressive (AR) processes. When a working model AR(k) is used for the h-step prediction with h > 1, the plug-in predictor is obtained from repeatedly using the fitted (by least squares) AR(k) model with an unknown future value replaced by their own forecasts, and the direct predictor is obtained by estimating the h-step prediction model's coefficients directly by linear least squares. Under rather mild conditions, asymptotic expressions for the mean-squared prediction errors (MSPEs) of these two predictors are obtained in stationary cases. In addition, we also extend these results to models with deterministic time trends. Based on these expressions, performances of the plug-in and direct predictors are compared. Finally, two examples are given to illustrate that some stationary case results on these MSPEs can not be generalized to the nonstationary case.The author is deeply grateful to the co-editor Pentti Saikkonen and two referees for their helpful suggestions and comments on a previous version of this paper.

自回归过程多步预测插入式预测直接预测