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Kronecker-Structured Nonparametric Spatiotemporal Point Processes

About

Events in spatiotemporal domains arise in numerous real-world applications, where uncovering event relationships and enabling accurate prediction are central challenges. Classical Poisson and Hawkes processes rely on restrictive parametric assumptions that limit their ability to capture complex interaction patterns, while recent neural point process models increase representational capacity but integrate event information in a black-box manner, hindering interpretable relationship discovery. To address these limitations, we propose a Kronecker-Structured Nonparametric Spatiotemporal Point Process (KSTPP) that enables transparent event-wise relationship discovery while retaining high modeling flexibility. We model the background intensity with a spatial Gaussian process (GP) and the influence kernel as a spatiotemporal GP, allowing rich interaction patterns including excitation, inhibition, neutrality, and time-varying effects. To enable scalable training and prediction, we adopt separable product kernels and represent the GPs on structured grids, inducing Kronecker-structured covariance matrices. Exploiting Kronecker algebra substantially reduces computational cost and allows the model to scale to large event collections. In addition, we develop a tensor-product Gauss-Legendre quadrature scheme to efficiently evaluate intractable likelihood integrals. Extensive experiments demonstrate the effectiveness of our framework.

Zhitong Xu, Qiwei Yuan, Yinghao Chen, Yan Sun, Bin Shen, Shandian Zhe• 2026

Related benchmarks

TaskDatasetResultRank
Next-event time and location predictionEarthquake
Temporal RMSE0.372
10
Next-event time and location predictionCitibike
Temporal RMSE0.206
10
Next-event time and location predictionCOVID-19
Temporal Error (RMSE)0.1
10
Marginal intensity recoverySyn1
Relative L2 Error4.44
6
Marginal intensity recoverySyn2
Relative L2 Error2
6
Spatiotemporal intensity recoverySyn1 (test)
Relative L2 Error0.0652
4
Spatiotemporal intensity recoverySyn2 (test)
Relative L2 Error3.67
4
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