Augmented data and neural networks for robust epidemic forecasting: application to COVID-19 in Italy
- URL: http://arxiv.org/abs/2510.09192v1
- Date: Fri, 10 Oct 2025 09:35:38 GMT
- Title: Augmented data and neural networks for robust epidemic forecasting: application to COVID-19 in Italy
- Authors: Giacomo Dimarco, Federica Ferrarese, Lorenzo Pareschi,
- Abstract summary: We propose a data augmentation strategy aimed at improving the training phase of neural networks.<n>Our approach relies on generating synthetic data through a suitable compartmental model combined with the incorporation of uncertainty.<n>The results show that neural networks trained on these augmented datasets exhibit significantly improved predictive performance.
- Score: 0.2676349883103403
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, we propose a data augmentation strategy aimed at improving the training phase of neural networks and, consequently, the accuracy of their predictions. Our approach relies on generating synthetic data through a suitable compartmental model combined with the incorporation of uncertainty. The available data are then used to calibrate the model, which is further integrated with deep learning techniques to produce additional synthetic data for training. The results show that neural networks trained on these augmented datasets exhibit significantly improved predictive performance. We focus in particular on two different neural network architectures: Physics-Informed Neural Networks (PINNs) and Nonlinear Autoregressive (NAR) models. The NAR approach proves especially effective for short-term forecasting, providing accurate quantitative estimates by directly learning the dynamics from data and avoiding the additional computational cost of embedding physical constraints into the training. In contrast, PINNs yield less accurate quantitative predictions but capture the qualitative long-term behavior of the system, making them more suitable for exploring broader dynamical trends. Numerical simulations of the second phase of the COVID-19 pandemic in the Lombardy region (Italy) validate the effectiveness of the proposed approach.
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