학술논문

Scaling Expected Force: Efficient Identification of Key Nodes in Network-Based Epidemic Models
Document Type
Conference
Source
2024 32nd Euromicro International Conference on Parallel, Distributed and Network-Based Processing (PDP) PDP Parallel, Distributed and Network-Based Processing (PDP), 2024 32nd Euromicro International Conference on. :98-107 Mar, 2024
Subject
Computing and Processing
Measurement
Epidemics
Force measurement
Scalability
Computational modeling
Force
Graphics processing units
Epidemic
SIR
Big Data
Expected Force
Graph Centrality
Network
Parallel Computing
Language
ISSN
2377-5750
Abstract
Structural centrality measures are often used to approximate or predict dynamical influence in a network. The recently proposed Expected Force of Infection (ExF) measures the entropy of all potential transmission paths starting at a node, effectively characterizing a node's role in epidemic diffusion processes. However, this promising metric has seen limited adoption mainly due to an inefficient formulation and the lack of an open-source implementation. In this paper, we present a novel cluster-centric, parallel algorithm enhancing ExF's efficiency and scalability. Compared to the simple parallel version of the original formulation of the ExF our efficient, open-source GPU implementation enables key nodes detection at previously intractable scales, with speed-ups of up to 300 x on networks with up to 44 million edges. Leveraging on our algorithm, we compare the ExF with other well-known centrality metrics, upon six real and synthetic contact networks. The ExF emerges as the best of the considered metrics in a few, important tasks: it predicts the likelihood of a global epidemic and its diffusion speed, based on the centrality of the seed node; and it predicts how many other infections will occur as a consequence, in some sense, of a specific node having caught the disease.