Neural Point Process for Learning Spatiotemporal Event Dynamics

12/12/2021
by   ZiHao Zhou, et al.
0

Learning the dynamics of spatiotemporal events is a fundamental problem. Neural point processes enhance the expressivity of point process models with deep neural networks. However, most existing methods only consider temporal dynamics without spatial modeling. We propose Deep Spatiotemporal Point Process (DeepSTPP), a deep dynamics model that integrates spatiotemporal point processes. Our method is flexible, efficient, and can accurately forecast irregularly sampled events over space and time. The key construction of our approach is the nonparametric space-time intensity function, governed by a latent process. The intensity function enjoys closed-form integration for the density. The latent process captures the uncertainty of the event sequence. We use amortized variational inference to infer the latent process with deep networks. Using synthetic datasets, we validate our model can accurately learn the true intensity function. On real-world benchmark datasets, our model demonstrates superior performance over state-of-the-art baselines.

READ FULL TEXT
research
02/17/2022

Variational Neural Temporal Point Process

A temporal point process is a stochastic process that predicts which typ...
research
11/15/2018

Multivariate Spatiotemporal Hawkes Processes and Network Reconstruction

There is often latent network structure in spatial and temporal data and...
research
05/01/2021

Deep Convolution for Irregularly Sampled Temporal Point Clouds

We consider the problem of modeling the dynamics of continuous spatial-t...
research
12/10/2019

Optimizing and accelerating space-time Ripley's K function based on Apache Spark for distributed spatiotemporal point pattern analysis

With increasing point of interest (POI) datasets available with fine-gra...
research
10/21/2021

Variational Predictive Routing with Nested Subjective Timescales

Discovery and learning of an underlying spatiotemporal hierarchy in sequ...
research
12/15/2021

Spatiotemporal ETAS model with a renewal main-shock arrival process

This article proposes a spatiotemporal point process model that enhances...
research
02/19/2014

Efficient Inference of Gaussian Process Modulated Renewal Processes with Application to Medical Event Data

The episodic, irregular and asynchronous nature of medical data render t...

Please sign up or login with your details

Forgot password? Click here to reset