Finding Patient Zero via Low-Dimensional Geometric Embeddings

April 17, 2026 Β· Grace Period Β· + Add venue

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Authors Stefan Huber, Dominik Kaaser arXiv ID 2604.16074 Category cs.CG: Computational Geometry Cross-listed cs.SI Citations 0
Abstract
We study the patient zero problem in epidemic spreading processes in the independent cascade model and propose a geometric approach for source reconstruction. Using Johnson-Lindenstrauss projections, we embed the contact network into a low-dimensional Euclidean space and estimate the infection source as the node closest to the center of gravity of infected nodes. Simulations on ErdΕ‘s-RΓ©nyi graphs demonstrate that our estimator achieves meaningful reconstruction accuracy despite operating on compressed observations.
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