End-to-End Modeling of Hierarchical Time Series Using Autoregressive Transformer and Conditional Normalizing Flow-based Reconciliation

Shiyu Wang, Fan Zhou, Yinbo Sun, Lintao Ma, James Zhang, Yang Zheng, Lei Lei, Yun Hu
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引用次数: 1

Abstract

Multivariate time series forecasting with hierarchi-cal structure is pervasive in real-world applications, demanding not only predicting each level of the hierarchy, but also recon-ciling all forecasts to ensure coherency, i.e., the forecasts should satisfy the hierarchical aggregation constraints. Moreover, the disparities of statistical characteristics between levels can be huge, worsened by non-Gaussian distributions and non-linear correlations. To this extent, we propose a novel end-to-end hierarchical time series forecasting model, based on conditioned normalizing flow-based autoregressive transformer reconciliation, to represent complex data distribution while simultaneously reconciling the forecasts to ensure coherency. Unlike other state-of-the-art methods, we achieve the forecasting and reconciliation simultaneously without requiring any explicit post-processing step. In addition, by harnessing the power of deep model, we do not rely on any assumption such as unbiased estimates or Gaussian distribution. Our evaluation experiments are conducted on four real-world hierarchical datasets from different industrial domains (three public ones and a dataset from the application servers of Alipay11Alipay is the world's leading company in payment technology. https:/len.wikipedia.org/wiki/Alipay) and the preliminary results demonstrate efficacy of our proposed method.
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基于自回归变压器和条件归一化流调节的分层时间序列端到端建模
具有层次结构的多变量时间序列预测在实际应用中非常普遍,它不仅需要预测层次结构的每一层,而且需要协调所有预测以确保一致性,即预测应满足层次聚集约束。此外,水平之间的统计特征差异可能是巨大的,非高斯分布和非线性相关性使其恶化。为此,我们提出了一种新的端到端分层时间序列预测模型,该模型基于条件归一化流自回归变压器调节,以表示复杂的数据分布,同时调节预测以确保一致性。与其他最先进的方法不同,我们同时实现预测和调节,而不需要任何明确的后处理步骤。此外,通过利用深度模型的力量,我们不依赖于任何假设,如无偏估计或高斯分布。我们的评估实验是在来自不同行业领域的四个真实世界的分层数据集(三个公共数据集和一个来自支付宝应用服务器的数据集)上进行的。支付宝是世界领先的支付技术公司。https:/len.wikipedia.org/wiki/Alipay),初步结果证明了我们提出的方法的有效性。
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