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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Next event prediction | COVID-19 (test) | Temporal RMSE0.095 | 9 | |
| Next event prediction | Earthquake (test) | Temporal Error (RMSE)0.378 | 9 | |
| Next event prediction | Citibike (test) | Temporal RMSE0.207 | 9 | |
| Spatio-temporal Point Process Modeling | Earthquake (test) | Temporal Negative Log-Likelihood1.299 | 9 | |
| Spatio-temporal Point Process Modeling | COVID-19 (test) | Temporal NLL2.476 | 9 | |
| Spatio-temporal Point Process Modeling | Citibike (test) | Temporal NLL2.44 | 9 |