相关时间序列的预测

Forecasting Related Time Series

Journal of Applied Econometrics · 2026
被引 0 · 同刊同年前 5%
人大 AABS 3

中文导读

提出一个相关时间序列预测模型,利用多个序列间的相似性或统计依赖关系,通过贝叶斯层次先验和高效MCMC方法进行估计,在三个数据集上取得良好预测效果。

Abstract

ABSTRACT A collection of time series are “related” if they follow similar stochastic processes and/or they are statistically dependent. This paper proposes a related time series (RTS) forecasting model that exploits these relationships. The model's foundation is a set of univariate Gaussian autoregressions, one for each series, which are then augmented to incorporate stochastic volatility, heavy‐tailed innovations, additive outliers, time‐varying parameters and common factors. The model is estimated and forecasts are computed using Bayesian methods with hierarchical priors that pool information across series. Computationally efficient MCMC methods are proposed. The RTS model is applied to three datasets and yields encouraging pseudo‐out‐of‐sample forecasting results.

相关时间序列预测贝叶斯分层先验马尔可夫链蒙特卡洛随机波动率