Neural Spatio-Temporal Point Processes
Machine Learning
2021-03-19 v3
Abstract
We propose a new class of parameterizations for spatio-temporal point processes which leverage Neural ODEs as a computational method and enable flexible, high-fidelity models of discrete events that are localized in continuous time and space. Central to our approach is a combination of continuous-time neural networks with two novel neural architectures, i.e., Jump and Attentive Continuous-time Normalizing Flows. This approach allows us to learn complex distributions for both the spatial and temporal domain and to condition non-trivially on the observed event history. We validate our models on data sets from a wide variety of contexts such as seismology, epidemiology, urban mobility, and neuroscience.
Cite
@article{arxiv.2011.04583,
title = {Neural Spatio-Temporal Point Processes},
author = {Ricky T. Q. Chen and Brandon Amos and Maximilian Nickel},
journal= {arXiv preprint arXiv:2011.04583},
year = {2021}
}