Diffusion learning achieves linear-rate agreement around the network centroid in stochastic non-convex distributed optimization.
Distributed learning in non-c onvex envi- ronments – Part II: Polynomial escape from saddle-points,
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Distributed Learning in Non-Convex Environments -- Part I: Agreement at a Linear Rate
Diffusion learning achieves linear-rate agreement around the network centroid in stochastic non-convex distributed optimization.