Immunization strategies for epidemic processes in time-varying contact networks
Michele Starnini, Anna Machens, Ciro Cattuto, Alain Barrat and, Romualdo Pastor Satorras

TL;DR
This study evaluates immunization strategies on time-varying contact networks, revealing that limited information suffices for effective strategies and that node importance varies over time, impacting strategy efficiency.
Contribution
It introduces an analysis of immunization strategies on empirical time-varying networks, highlighting the limited benefit of longer training windows and the variability of node importance.
Findings
Limited training data is sufficient for effective immunization strategies.
Node importance varies significantly over time, affecting strategy performance.
Randomized, locally-informed strategies perform consistently regardless of data amount.
Abstract
Spreading processes represent a very efficient tool to investigate the structural properties of networks and the relative importance of their constituents, and have been widely used to this aim in static networks. Here we consider simple disease spreading processes on empirical time-varying networks of contacts between individuals, and compare the effect of several immunization strategies on these processes. An immunization strategy is defined as the choice of a set of nodes (individuals) who cannot catch nor transmit the disease. This choice is performed according to a certain ranking of the nodes of the contact network. We consider various ranking strategies, focusing in particular on the role of the training window during which the nodes' properties are measured in the time-varying network: longer training windows correspond to a larger amount of information collected and could be…
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