Forecast reconciliation of multivariate time series is the process of mapping a set of incoherent forecasts into coherent forecasts to satisfy a given set of linear constraints. Commonly used projection matrix based approaches for point forecast reconciliation are OLS (ordinary least squares), WLS (weighted least squares), and MinT (minimum trace). Even though point forecast reconciliation is a well-established field of research, the literature on generating probabilistic forecasts subject to linear constraints is somewhat limited. Available methods follow a two-step procedure. Firstly, it draws future sample paths from the univariate models fitted to each series in the collection (which are incoherent). Secondly, it uses a projection matrix based approach or empirical copula based reordering approach to account for contemporaneous correlations and linear constraints. The projection matrices are estimated either by optimizing a scoring rule such as energy or variogram score, or simply using a projection matrix derived for point forecast reconciliation. This paper proves that (a) if the incoherent predictive distribution is Gaussian then MinT minimizes the logarithmic scoring rule; and (b) the logarithmic score of MinT for each marginal predictive density is smaller than that of OLS. We show these theoretical results using a set of simulation studies. We also evaluate them using the Australian domestic tourism data set.
翻译:多变时间序列的预测对齐是一个过程,将一组不连贯的预测绘制成一致的预测,以满足一套特定的线性限制。通常使用的基于点预报对齐的预测矩阵方法有:OSLS(普通最小平方)、WLS(加权最小平方)和MINT(最小痕量)。即使点预测对齐是一个已经确立的研究领域,关于生成受线性限制的概率预测的文献也有些有限。可用的方法遵循一个两步程序。首先,它从为收集的每个序列安装的单体模型(不连贯的)中抽取未来的样本路径。第二,它使用基于预测矩阵的方法或基于实验性对齐线性约束的重新排序方法来计算同时期关系和线性限制。预测矩阵是通过优化一个评分规则,如能源或变动图评分,或者只是利用从点预测中得出的预测矩阵来进行估算。本文证明:(a)如果混集的预测分布是高斯,然后 MINT 尽量减少对数的评分值规则;第二,它使用每个边际的对数模型来预测,我们使用这些对等的对等的对数的对数研究的对数数据是使用澳大利亚的对数模型。