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GLIDE: Graph-guided Leap Inference for Diffusion Estimation of Spatio-Temporal Point Processes

About

Spatio-temporal point processes (STPPs) provide a principled framework for modeling asynchronous events in continuous time and space. Recent diffusion-based approaches offer a flexible alternative to deterministic prediction by modeling complex conditional distributions, but their application to STPPs remains challenging: reverse sampling from pure noise is costly, and weak structural constraints in sparse spatial domains can lead to poorly localized probability mass. We propose \textbf{GLIDE} (Graph-guided Leap Inference for Diffusion Estimation), a conditional diffusion framework for next-event modeling in STPPs. GLIDE organizes historical events into a multi-scale historical graph and encodes temporal evolution and spatial topology through a dual-stream architecture, yielding a structured conditioning context for a dual-branch diffusion denoiser. It further introduces a prior-guided leap inference mechanism, in which a lightweight mean predictor provides a deterministic anchor and the reverse process starts from an intermediate diffusion step instead of from pure Gaussian noise. Experiments on multiple real-world datasets show that GLIDE improves both distribution fitting and next-event prediction, with the largest gains appearing on the spatial side. The results also indicate that prior-guided leap inference substantially reduces reverse-sampling cost while preserving the stochastic generation capability of diffusion models.

Guanyu Zhou, Yao Liu, Yanglei Gan, Yuxiang Cai, Peng He, Run Lin, Yuxiang Liu, Qiao Liu• 2026

Related benchmarks

TaskDatasetResultRank
Next event predictionCOVID-19 (test)
Temporal RMSE0.095
9
Next event predictionEarthquake (test)
Temporal Error (RMSE)0.378
9
Next event predictionCitibike (test)
Temporal RMSE0.207
9
Spatio-temporal Point Process ModelingEarthquake (test)
Temporal Negative Log-Likelihood1.299
9
Spatio-temporal Point Process ModelingCOVID-19 (test)
Temporal NLL2.476
9
Spatio-temporal Point Process ModelingCitibike (test)
Temporal NLL2.44
9
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