Harnessing Smoothness to Accelerate Distributed Optimization
Since fis an average of the f i’s, Assumption 1 also implies fis convex and -smooth, and Assumption 2 also implies fis -strongly convex. B. Algorithm The algorithm we will describe is a consensus-based distributed algorithm. Each agent weighs its neighbors’ information to compute its local decisions.
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