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Learning graph topology from metapopulation epidemic encoder-decoder

About

Metapopulation epidemic models are a valuable tool for studying large-scale outbreaks. With the limited availability of epidemic tracing data, it is challenging to infer the essential constituents of these models, namely, the epidemic parameters and the relevant mobility network between subpopulations. Either one of these constituents can be estimated while assuming the other; however, the problem of their joint inference has not yet been solved. Here, we propose two encoder-decoder deep learning architectures that infer metapopulation mobility graphs from time-series data, with and without the assumption of epidemic model parameters. Evaluation across diverse random and empirical mobility networks shows that the proposed approach outperforms the state-of-the-art topology inference. Further, we show that topology inference improves dramatically with data on additional pathogens. Our study establishes a robust framework for simultaneously inferring epidemic parameters and topology, addressing a persistent gap in modeling disease propagation.

Xin Li, Jonathan Cohen, Shai Pilosof, Rami Puzis• 2026

Related benchmarks

TaskDatasetResultRank
Epidemic parameter estimationContiguous US
RMSE (beta)0.00e+0
10
Epidemic parameter estimationER
RMSE (beta)0.00e+0
5
Epidemic parameter estimationBA
RMSE (beta)0.00e+0
5
Epidemic parameter estimationWS
RMSE (beta)0.00e+0
5
Epidemic parameter estimationRGG
RMSE (beta)0.00e+0
5
Epidemic parameter estimationContiguous China
RMSE (beta)0.00e+0
5
Epidemic parameter estimationContiguous EU
RMSE (beta)0.00e+0
5
Epidemic parameter estimationContiguous Africa
RMSE (beta)0.00e+0
5
Epidemic parameter estimationMobility Germany
RMSE (beta)0.00e+0
5
Epidemic parameter estimationMobility US
RMSE (beta)0.00e+0
5
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