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Forecasting daily time series using periodic unobserved components time series models

机译:使用周期性的未观测组件时间序列模型预测每日时间序列

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摘要

A periodic time series analysis is explored in the context of unobserved components time series models that include stochastic time functions for trend, seasonal and irregular effects. Periodic time series models allow dynamic characteristics (autocovariances) to depend on the period of the year, month, week or day. In the standard multivariate approach one can interpret a periodic time series analysis as a simultaneous treatment of typically yearly time series where each series is related to a particular season. Here, the periodic analysis applies to a vector of monthly time series related to each day of the month. Particular focus is on the forecasting performance and therefore on the underlying periodic forecast function, defined by the in-sample observation weights for producing (multi-step) forecasts.
机译:在未观察到的组件时间序列模型的背景下探索了周期性时间序列分析,该模型包括用于趋势,季节和不规则影响的随机时间函数。周期时间序列模型允许动态特性(自协方差)取决于年,月,周或日的周期。在标准的多元方法中,可以将定期的时间序列分析解释为对典型的年度时间序列的同时处理,其中每个时间序列都与特定季节相关。在此,定期分析适用于与每月的每一天相关的每月时间序列的向量。特别关注的是预测性能,因此也要关注底层的定期预测函数,该函数由样本内观察权重定义以生成(多步)预测。

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