时空高斯过程回归的有效实现及其应用

Junpeng Zhang, Yue Ju, Biqiang Mu, Renxin Zhong, Tianshi Chen
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引用次数: 1

摘要

时空高斯过程回归是一种流行的时空数据建模方法。其最先进的实现是基于时空高斯过程及其相应的卡尔曼滤波和平滑的状态-空间模型实现,其计算复杂度为$\mathcal{O}(NM^3)$,其中$N$和$M$分别为时间瞬间数和空间输入位置数,因此只能应用于$N$大而$M$相对较小的数据。在本文中,我们的主要目标是表明,通过探索时空高斯过程的状态空间模型实现的Kronecker结构,有可能进一步将计算复杂度降低到$\mathcal{O}(M^3+NM^2)$,从而提出的实现可以应用于具有大$N$和中等大$M$的数据。最后以天气数据预测和空间分布式系统识别为例说明了该方法的实现。我们的第二个目标是为科罗拉多降水数据和GHCN温度数据设计一个内核,这样在实现更有效的同时,也可以实现比最先进的结果更好的预测性能。
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An Efficient Implementation for Spatial-Temporal Gaussian Process Regression and Its Applications
Spatial-temporal Gaussian process regression is a popular method for spatial-temporal data modeling. Its state-of-art implementation is based on the state-space model realization of the spatial-temporal Gaussian process and its corresponding Kalman filter and smoother, and has computational complexity $\mathcal{O}(NM^3)$, where $N$ and $M$ are the number of time instants and spatial input locations, respectively, and thus can only be applied to data with large $N$ but relatively small $M$. In this paper, our primary goal is to show that by exploring the Kronecker structure of the state-space model realization of the spatial-temporal Gaussian process, it is possible to further reduce the computational complexity to $\mathcal{O}(M^3+NM^2)$ and thus the proposed implementation can be applied to data with large $N$ and moderately large $M$. The proposed implementation is illustrated over applications in weather data prediction and spatially-distributed system identification. Our secondary goal is to design a kernel for both the Colorado precipitation data and the GHCN temperature data, such that while having more efficient implementation, better prediction performance can also be achieved than the state-of-art result.
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