Kronecker-Structured Nonparametric Spatiotemporal Point Processes
arXiv cs.LG / 3/26/2026
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Key Points
- The paper proposes a Kronecker-Structured Nonparametric Spatiotemporal Point Process (KSTPP) to better model complex relationships in spatiotemporal event data than classical Poisson/Hawkes models with fixed parametric forms.
- It improves interpretability by enabling event-wise relationship discovery while maintaining flexibility via Gaussian-process (GP) background intensity and spatiotemporal GP influence kernels.
- The model supports rich interaction behaviors such as excitation, inhibition, neutrality, and time-varying effects through the learned influence kernel.
- To scale training and prediction, it uses separable product kernels and structured-grid GP representations that yield Kronecker-structured covariance matrices, reducing computational cost for large event sets.
- It introduces a tensor-product Gauss–Legendre quadrature approach to efficiently approximate otherwise intractable likelihood integrals, and reports strong experimental results.
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