Scalable Distributed Reproduction Numbers of Network Epidemics with Differential Privacy
Bo Chen, Baike She, Calvin Hawkins, Philip E. Par\'e, Matthew T. Hale

TL;DR
This paper introduces local and cluster distributed reproduction numbers for network epidemics, enabling detailed epidemic analysis while incorporating differential privacy to protect interaction data, and demonstrates their effectiveness through numerical experiments.
Contribution
It proposes novel local and cluster distributed reproduction numbers for network epidemics, integrating differential privacy for secure computation, and provides theoretical and empirical validation.
Findings
Distributed reproduction numbers accurately estimate epidemic spread.
Differential privacy preserves interaction confidentiality.
Proposed methods outperform traditional reproduction numbers.
Abstract
Reproduction numbers are widely used for the estimation and prediction of epidemic spreading processes over networks. However, conventional reproduction numbers of an overall network do not indicate where an epidemic is spreading. Therefore, we propose a novel notion of local distributed reproduction numbers to capture the spreading behaviors of each node in a network. We first show how to compute them and then use them to derive new conditions under which an outbreak can occur. These conditions are then used to derive new conditions for the existence, uniqueness, and stability of equilibrium states of the underlying epidemic model. Building upon these local distributed reproduction numbers, we define cluster distributed reproduction numbers to model the spread between clusters composed of nodes. Furthermore, we demonstrate that the local distributed reproduction numbers can be…
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Taxonomy
TopicsComplex Network Analysis Techniques · Mental Health Research Topics · Bioinformatics and Genomic Networks
