We study the steady-state probability distribution of diffusion and consensus strategies that employ constant step-sizes to enable continuous adaptation and learning. We show that, in the small step-size regime, the estimation error at each agent approaches a Gaussian distribution. More importantly, the covariance matrix of this distribution is shown to coincide with the error covariance matrix that would result from a centralized stochastic-gradient strategy. The results hold regardless of the connected topology and help clarify the convergence and learning behavior of distributed strategies in an interesting way.
Pierre Vandergheynst, Milos Vasic, Francesco Craighero, Renata Khasanova
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Mathieu Salzmann, Alexandre Massoud Alahi, Megh Hiren Shukla