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Modelling the Working Week for Multi-Step Forecasting using Gaussian Process Regression

机译:使用高斯过程回归模拟工作周进行多步预测

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In time-series forecasting, regression is a popular method, with Gaussian Process Regression widely held to be the state of the art. The versatility of Gaussian Processes has led to them being used in many varied application domains. However, though many real-world applications involve data which follows a working-week structure, where weekends exhibit substantially different behaviour to weekdays, methods for explicit modelling of working-week effects in Gaussian Process Regression models have not been proposed. Not explicitly modelling the working week fails to incorporate a significant source of information which can be invaluable in forecasting scenarios. In this work we provide novel kernel-combination methods to explicitly model working-week effects in time-series data for more accurate predictions using Gaussian Process Regression. Further, we demonstrate that prediction accuracy can be improved by constraining the non-convex optimisation process of finding optimal hyperparameter values. We validate the effectiveness of our methods by performing multi-step prediction on two real-world publicly available time-series datasets - one relating to electricity Smart Meter data of the University of Melbourne, and the other relating to the counts of pedestrians in the City of Melbourne.
机译:在时间序列预测中,回归是一种流行的方法,高斯进程回归被广泛被认为是现有技术。高斯过程的多功能性导致它们在许多各种应用领域中使用。然而,尽管许多现实世界应用涉及遵循工作周结构的数据,但是周末对平日表现出实质不同的行为,尚未提出在高斯过程回归模型中显式建模的方法。未明确建模工作周未能包含重要信息来源,这些信息可能在预测方案中非常宝贵。在这项工作中,我们提供了新的内核组合方法,以在时间序列数据中明确地模拟工作周的效果,以便使用高斯进程回归更准确的预测。此外,我们通过限制找到最佳超参数值的非凸优化过程来提高预测准确性。我们通过对两个现实世界公开的时序数据集进行多步预测来验证我们的方法的有效性 - 与墨尔本大学的电智能电表数据有关,另一个与城市的行人有关墨尔本。

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