Inspired by the subgradient push method developed recently by Nedić et al. we present a distributed dual averaging push algorithm for constrained nonsmooth convex optimization over time-varying directed graph. Our algorithm combines the dual averaging method with the push-sum technique and achieves an O(1/ √k) convergence rate. Compared with the subgradient push algorithm, our algorithm, first, addresses the constrained problems, and, second, has a faster convergence rate, and, third, simplifies the convergence analysis. We also generalize the proposed algorithm so that input variables of subgradient oracles have guaranteed convergence.
Konstantinos I. TsianosSean LawlorMichael Rabbat
Menghui XiongBaoyong ZhangDeming YuanShengyuan Xu
Mohammad Amin AkbariBahman GharesifardTamás Linder
Dong WangJiaxun LiuJie LianYang LiuZhu WangWei Wang
Yiyue ChenAbolfazl HashemiHaris Vikalo