Modelling epidemics using contact networks provides a significant improvement over classical
compartmental models by explicitly incorporating the network of contacts. However, while
network-based models describe disease spread on a given contact structure, their potential for
inferring the underlying network from epidemic data remains largely unexplored. In this work,
we consider the edge-based compartmental model (EBCM), a compact and analytically tractable
framework, and we integrate it within dynamical survival analysis (DSA) to infer key network
properties along with parameters of the epidemic itself. Despite correlations between structural
and epidemic parameters, our framework demonstrates robustness in accurately inferring
contact network properties from synthetic epidemic simulations. Additionally, we apply the
framework to real-world outbreaks—the 2001 UK foot-and-mouth disease outbreak and the
COVID-19 epidemic in Seoul— to estimate both disease parameters and network characteristics.
Our results show that our framework achieves good fits to real-world epidemic data and
reliable short-term forecasts. These findings highlight the potential of network-based inference
approaches to uncover hidden contact structures, providing insights that can inform the design
of targeted interventions and public health strategies
Is data on this page outdated, violates copyrights or anything else? Report the problem now and we will take corresponding actions after reviewing your request.