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Assessing direct and indirect seasonal decomposition in state space

机译:评估状态空间中的直接和间接季节性分解

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The problem of whether seasonal decomposition should be used prior to or after aggregation of time series is quite old. We tackle the problem by using a state-space representation and the variance/covariance structure of a simplified one-component model. The variances of the estimated components in a two-series system are compared for direct and indirect approaches and also to a multivariate method. The covariance structure between the two time series is important for the relative efficiency. Indirect estimation is always best when the series are independent, but when the series or the measurement errors are negatively correlated, direct estimation may be much better in the above sense. Some covariance structures indicate that direct estimation should be used while others indicate that an indirect approach is more efficient. Signal-to-noise ratios and relative variances are used for inference.
机译:是否应该在时间序列汇总之前或之后使用季节性分解的问题已经很久了。我们通过使用状态空间表示和简化的单分量模型的方差/协方差结构来解决该问题。比较了两个系列系统中估计分量的方差,以进行直接和间接方法以及多元方法的比较。两个时间序列之间的协方差结构对于相对效率很重要。当序列是独立的时,间接估计总是最好的,但是当序列或测量误差负相关时,从上述意义上讲,直接估计可能会更好。一些协方差结构指示应使用直接估计,而其他协方差结构指示间接方法更有效。信噪比和相对方差用于推断。

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