Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

DiffSTG: Probabilistic Spatio-Temporal Graph Forecasting with Denoising Diffusion Models

About

Spatio-temporal graph neural networks (STGNN) have emerged as the dominant model for spatio-temporal graph (STG) forecasting. Despite their success, they fail to model intrinsic uncertainties within STG data, which cripples their practicality in downstream tasks for decision-making. To this end, this paper focuses on probabilistic STG forecasting, which is challenging due to the difficulty in modeling uncertainties and complex ST dependencies. In this study, we present the first attempt to generalize the popular denoising diffusion probabilistic models to STGs, leading to a novel non-autoregressive framework called DiffSTG, along with the first denoising network UGnet for STG in the framework. Our approach combines the spatio-temporal learning capabilities of STGNNs with the uncertainty measurements of diffusion models. Extensive experiments validate that DiffSTG reduces the Continuous Ranked Probability Score (CRPS) by 4%-14%, and Root Mean Squared Error (RMSE) by 2%-7% over existing methods on three real-world datasets.

Haomin Wen, Youfang Lin, Yutong Xia, Huaiyu Wan, Qingsong Wen, Roger Zimmermann, Yuxuan Liang• 2023

Related benchmarks

TaskDatasetResultRank
Traffic Flow ForecastingPEMS08 (test)
MAE17.74
78
Traffic Flow ForecastingPEMS04 (test)
MAE21.9
78
Epidemic ForecastingJapan TB medium-term (test)
SMAPE87.55
30
Long-term forecastingJapan TB (test)
Empirical Coverage100
24
Long-term forecastingHungary Chickenpox (test)
Empirical Coverage98
24
Long-term forecastingILI (test)
Empirical Coverage0.92
24
Long-term forecastingBelgium COVID-19 (test)
Empirical Coverage100
24
Long-term forecastingColombia Dengue (test)
Empirical Coverage83
24
Long-term forecastingChina TB (test)
Empirical Coverage99
16
Short-term forecastingBelgium COVID-19
SMAPE86.7
15
Showing 10 of 25 rows

Other info

Follow for update