LGSIJun 15, 2023

MPSTAN: Metapopulation-based Spatio-Temporal Attention Network for Epidemic Forecasting

arXiv:2306.12436v114 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses the need for governments to develop effective prevention measures by improving forecasting accuracy, though it appears incremental as it builds on existing spatio-temporal models with domain knowledge integration.

The paper tackles the problem of accurate epidemic forecasting by proposing MPSTAN, a hybrid model that incorporates multi-patch epidemiological knowledge and adaptively defines inter-patch interactions, resulting in outperforming baselines and providing more accurate and stable short- and long-term forecasting on two datasets.

Accurate epidemic forecasting plays a vital role for governments in developing effective prevention measures for suppressing epidemics. Most of the present spatio-temporal models cannot provide a general framework for stable, and accurate forecasting of epidemics with diverse evolution trends. Incorporating epidemiological domain knowledge ranging from single-patch to multi-patch into neural networks is expected to improve forecasting accuracy. However, relying solely on single-patch knowledge neglects inter-patch interactions, while constructing multi-patch knowledge is challenging without population mobility data. To address the aforementioned problems, we propose a novel hybrid model called Metapopulation-based Spatio-Temporal Attention Network (MPSTAN). This model aims to improve the accuracy of epidemic forecasting by incorporating multi-patch epidemiological knowledge into a spatio-temporal model and adaptively defining inter-patch interactions. Moreover, we incorporate inter-patch epidemiological knowledge into both the model construction and loss function to help the model learn epidemic transmission dynamics. Extensive experiments conducted on two representative datasets with different epidemiological evolution trends demonstrate that our proposed model outperforms the baselines and provides more accurate and stable short- and long-term forecasting. We confirm the effectiveness of domain knowledge in the learning model and investigate the impact of different ways of integrating domain knowledge on forecasting. We observe that using domain knowledge in both model construction and loss functions leads to more efficient forecasting, and selecting appropriate domain knowledge can improve accuracy further.

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