Temporal clustering of social interactions trades-off disease spreading and knowledge diffusion

Author:

Cencetti Giulia12ORCID,Lucchini Lorenzo3ORCID,Santin Gabriele14,Battiston Federico5,Moro Esteban67,Pentland Alex6,Lepri Bruno1

Affiliation:

1. Digital Society Center, Fondazione Bruno Kessler, Trento, Italy

2. Centre de Physique Théorique, CNRS, Aix-Marseille Univ, Université de Toulon, Marseille, France

3. DONDENA and BIDSA Research Centres—Bocconi University, Milan, Italy

4. Department of Environmental Sciences, Informatics and Statistics, University of Venice, Venezia, Italy

5. Department of Network and Data Science, Central European University, Vienna, Austria

6. Media Lab, Massachusetts Institute of Technology, Cambridge, MA, USA

7. Department of Mathematics & GISC, Universidad Carlos III de Madrid, Leganes, Spain

Abstract

Non-pharmaceutical measures such as preventive quarantines, remote working, school and workplace closures, lockdowns, etc. have shown effectiveness from an epidemic control perspective; however, they have also significant negative consequences on social life and relationships, work routines and community engagement. In particular, complex ideas, work and school collaborations, innovative discoveries and resilient norms formation and maintenance, which often require face-to-face interactions of two or more parties to be developed and synergically coordinated, are particularly affected. In this study, we propose an alternative hybrid solution that balances the slowdown of epidemic diffusion with the preservation of face-to-face interactions, that we test simulating a disease and a knowledge spreading simultaneously on a network of contacts. Our approach involves a two-step partitioning of the population. First, we tune the level of node clustering, creating ‘social bubbles’ with increased contacts within each bubble and fewer outside, while maintaining the average number of contacts in each network. Second, we tune the level of temporal clustering by pairing, for a certain time interval, nodes from specific social bubbles. Our results demonstrate that a hybrid approach can achieve better trade-offs between epidemic control and complex knowledge diffusion. The versatility of our model enables tuning and refining clustering levels to optimally achieve the desired trade-off, based on the potentially changing characteristics of a disease or knowledge diffusion process.

Funder

H2020 Marie Skłodowska-Curie Actions

NextGenerationEU

European Union

Air Force Office of Scientific Research

Publisher

The Royal Society

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