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The vector innovations structural time series framework: A simple approach to multivariate forecasting

机译:向量创新结构时间序列框架:多元预测的简单方法

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The vector innovations structural time series framework is proposed as a way of modelling a set of related time series. As with all multivariate approaches, the aim is to exploit potential interseries dependencies to improve the fit and forecasts. The model is based around an unobserved vector of components representing features such as the level and slope of each time series. Equations that describe the evolution of these components through time are used to represent the inter-temporal dependencies. The approach is illustrated on a bivariate dataset comprising Australian exchange rates of the UK pound and US dollar. The forecasting accuracy of the new modelling framework is compared to other common uni- and multivariate approaches in an experiment using time series from a large macroeconomic database.
机译:提出了向量创新结构时间序列框架,作为对一组相关时间序列进行建模的方法。与所有多变量方法一样,目标是利用潜在的序列间依存关系来改善拟合和预测。该模型基于表示特征(例如每个时间序列的水平和斜率)的分量的不可观察向量。描述这些成分随时间变化的方程式用来表示时间间的依存关系。在包括英镑和美元的澳大利亚汇率的双变量数据集上说明了该方法。在使用大型宏观经济数据库中的时间序列进行的实验中,将新建模框架的预测准确性与其他常见的单变量和多变量方法进行了比较。

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