We consider the problem of forecasting multivariate time series by a Seemingly Unrelated Time Series Equations (SUTSE) model. The SUTSE model usually assumes that error variables are correlated. A crucial issue is that the model estimation requires heavy computational loads because of a large matrix computation, especially for high-dimensional data. To alleviate the computational issue, we propose a two-stage procedure for forecasting. First, we perform the Kalman filter as if error variables are uncorrelated; that is, univariate time-series analyses are conducted separately to avoid a large matrix computation. Next, the forecast value is computed by using a distribution of forecast error. The proposed algorithm is much faster than the ordinary SUTSE model because we do not require a large matrix computation. Some theoretical properties of our proposed estimator are presented. Monte Carlo simulation is performed to investigate the effectiveness of our proposed method. The usefulness of our proposed procedure is illustrated through a bus congestion data application.
翻译:我们用一个似乎不相关的时间序列(SUTSE)模型来预测多变时间序列的问题。 SUTSE 模型通常假定错误变量是相互关联的。一个关键问题是模型估计需要大量计算,因为大量矩阵计算,特别是高维数据。为了缓解计算问题,我们建议了两个阶段的预报程序。首先,我们执行卡尔曼筛选程序,仿佛错误变量不相关;也就是说,单独的时间序列分析是单独进行的,以避免大型矩阵计算。接下来,预测值是通过使用预测错误的分布来计算的。拟议的算法比普通 SUTSE 模型要快得多,因为我们不需要大矩阵计算。介绍了我们拟议估算器的一些理论属性。蒙特卡洛模拟是为了调查我们拟议方法的有效性。我们提议的程序的有用性通过总线拥挤数据应用来说明。