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CORR
2011
Springer

Accelerated Dual Descent for Network Optimization

12 years 11 months ago
Accelerated Dual Descent for Network Optimization
—Dual descent methods are commonly used to solve network optimization problems because their implementation can be distributed through the network. However, their convergence rates are typically very slow. This paper introduces a family of dual descent algorithms that use approximate Newton directions to accelerate the convergence rate of conventional dual descent. These approximate directions can be computed using local information exchanges thereby retaining the benefits of distributed implementations. The approximate Newton directions are obtained through matrix splitting techniques and sparse Taylor approximations of the inverse Hessian. We show that, similarly to conventional Newton methods, the proposed algorithm exhibits superlinear convergence within a neighborhood of the optimal value. Numerical analysis corroborates that convergence times are between one to two orders of magnitude faster than existing distributed optimization methods. A connection with recent developments ...
Michael Zargham, A. Ribeiro, Ali Jadbabaie, Asuman
Added 28 May 2011
Updated 28 May 2011
Type Journal
Year 2011
Where CORR
Authors Michael Zargham, A. Ribeiro, Ali Jadbabaie, Asuman E. Ozdaglar
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