Multiple seasonal patterns play a key role in time series forecasting, especially for business time series where seasonal effects are often dramatic. Previous approaches including Fourier decomposition, exponential smoothing, and seasonal autoregressive integrated moving average (SARIMA) models do not reflect the distinct characteristics of each period in seasonal patterns. We propose a mixed hierarchical seasonality (MHS) model. Intermediate parameters for each seasonal period are first estimated, and a mixture of intermediate parameters is taken. This results in a model that automatically learns the relative importance of each seasonality and addresses the interactions between them. The model is implemented with Stan, a probabilistic language, and was compared with three existing models on a real-world dataset of pallet transport from a logistic network. Our new model achieved considerable improvements in terms of out of sample prediction error (MAPE) and predictive density (ELPD) compared to complete pooling, Fourier decomposition, and SARIMA model.
翻译:包括Fourier分解、指数滑动和季节性自动递减综合移动平均(SARIMA)模型在内的以往方法并不反映季节模式中每个时期的不同特点。我们提议了一个混合等级季节性模型,每个季节期的中间参数首先估算,混合中间参数。这导致一个模型自动了解每个季节性的相对重要性并处理它们之间的相互作用。该模型与Stan(一种概率语言)一起实施,并与关于物流网络托盘运输的现实世界数据集的三个现有模型进行了比较。我们的新模型在抽样预测误差(MAPE)和预测密度(ELPD)方面有了相当大的改进,与完整的集合、Fourier解剖位置和SARIMA模型相比,在抽样预测误差(MAPE)和预测密度(ELPD)方面有了相当大的改进。