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Spatio-temporal Diffusion Point Processes

About

Spatio-temporal point process (STPP) is a stochastic collection of events accompanied with time and space. Due to computational complexities, existing solutions for STPPs compromise with conditional independence between time and space, which consider the temporal and spatial distributions separately. The failure to model the joint distribution leads to limited capacities in characterizing the spatio-temporal entangled interactions given past events. In this work, we propose a novel parameterization framework for STPPs, which leverages diffusion models to learn complex spatio-temporal joint distributions. We decompose the learning of the target joint distribution into multiple steps, where each step can be faithfully described by a Gaussian distribution. To enhance the learning of each step, an elaborated spatio-temporal co-attention module is proposed to capture the interdependence between the event time and space adaptively. For the first time, we break the restrictions on spatio-temporal dependencies in existing solutions, and enable a flexible and accurate modeling paradigm for STPPs. Extensive experiments from a wide range of fields, such as epidemiology, seismology, crime, and urban mobility, demonstrate that our framework outperforms the state-of-the-art baselines remarkably, with an average improvement of over 50%. Further in-depth analyses validate its ability to capture spatio-temporal interactions, which can learn adaptively for different scenarios. The datasets and source code are available online: https://github.com/tsinghua-fib-lab/Spatio-temporal-Diffusion-Point-Processes.

Yuan Yuan, Jingtao Ding, Chenyang Shao, Depeng Jin, Yong Li• 2023

Related benchmarks

TaskDatasetResultRank
Trajectory User LinkWeePlace
Acc@118.85
23
Air pollution forecastingNanjing Mobile
MAE8.87
17
Air pollution forecastingChangshu Mobile
MAE10.62
17
Air pollution forecastingChangshu National
MAE9.2
17
Air pollution forecastingNanjing National
MAE11.63
17
Next Location PredictionGowalla
Acc@110.85
13
Next Location PredictionBrightkite
Accuracy @ 10.4871
13
Next Location PredictionFourSquare
Top-1 Accuracy13.3
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Time PredictionWeePlace
MAE28.82
8
Time PredictionFourSquare
MAE317.8
8
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