Distributed Subgradient Projection Algorithm over Directed Graphs: Alternate Proof
Abstract
We propose Directed-Distributed Projected Subgradient (D-DPS) to solve a constrained optimization problem over a multi-agent network, where the goal of agents is to collectively minimize the sum of locally known convex functions. Each agent in the network owns only its local objective function, constrained to a commonly known convex set. We focus on the circumstance when communications between agents are described by a \emph{directed} network. The D-DPS combines surplus consensus to overcome the asymmetry caused by the directed communication network. The analysis shows the convergence rate to be .
Cite
@article{arxiv.1706.07707,
title = {Distributed Subgradient Projection Algorithm over Directed Graphs: Alternate Proof},
author = {Ran Xin and Chenguang Xi and Usman A. Khan},
journal= {arXiv preprint arXiv:1706.07707},
year = {2017}
}
Comments
Disclaimer: This manuscript provides an alternate approach to prove the results in \textit{C. Xi and U. A. Khan, Distributed Subgradient Projection Algorithm over Directed Graphs, in IEEE Transactions on Automatic Control}. The changes, colored in blue, result into a tighter result in Theorem~1". arXiv admin note: text overlap with arXiv:1602.00653