使用相关成本函数估计时间序列模型

Estimating time series models using the relevant cost function

Journal of Applied Econometrics · 1996
被引 92
人大 AABS 3

中文导读

探讨在预测中如何用预测成本函数来估计模型参数、选择模型和生成预测,并用15个美国宏观经济序列和蒙特卡洛实验展示方法。

Abstract

In many forecasting problems, the forecast cost function is used only in evaluating the forecasts; a second cost function is used in estimating the parameters in the model. In this paper, I explore some of the ways in which the forecast cost function can be used in estimating the parameters and, more generally, in producing the forecasts. I define the optimal forecast and note that it may depend on the entire conditional distribution of the data, which is typically unknown. I then consider three of the steps involved in forming the forecast: approximating the optimal forecast, selecting the model, and estimating any unknown parameters. The forecast cost function forms the basis of the approximation, selection, and estimation. The methods are illustrated using time series models applied to 15 US macroeconomic series and in a small Monte Carlo experiment.

时间序列模型成本函数参数估计最优预测