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Gossip algorithms and their accelerated versions have been studied exclusively in discrete time on graphs. In this work, we take a different approach and consider the scaling limit of gossip algorithms in both large graphs and large number of iterations. These limits lead to well-known partial differential equations (PDEs) with insightful properties. On lattices, we prove that the non-accelerated gossip algorithm of converges to the heat equation, and the accelerated Jacobi polynomial iteration of converges to the Euler-Poisson-Darboux (EPD) equation-a damped wave equation. Remarkably, with appropriate parameters, the fundamental solution of the EPD equation has the ideal gossip behaviour: a uniform density over an ellipsoid, whose radius increases at a rate proportional to -the fastest possible rate for locally communicating gossip algorithms. This is in contrast with the heat equation where the density spreads on a typical scale of root t. Additionally, we provide simulations demonstrating that the gossip algorithms are accurately approximated by their limiting PDEs.
Victor Panaretos, Neda Mohammadi Jouzdani
Hoài-Minh Nguyên, Jean Louis-Alexandre Fornerod
Maria Colombo, Silja Noëmi Aline Haffter