A joint spectral-radius technique for the product of two ADMM matrices tightens local linear convergence bounds compared with separate norm products.
A General Analysis of the Convergence of ADMM
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abstract
We provide a new proof of the linear convergence of the alternating direction method of multipliers (ADMM) when one of the objective terms is strongly convex. Our proof is based on a framework for analyzing optimization algorithms introduced in Lessard et al. (2014), reducing algorithm convergence to verifying the stability of a dynamical system. This approach generalizes a number of existing results and obviates any assumptions about specific choices of algorithm parameters. On a numerical example, we demonstrate that minimizing the derived bound on the convergence rate provides a practical approach to selecting algorithm parameters for particular ADMM instances. We complement our upper bound by constructing a nearly-matching lower bound on the worst-case rate of convergence.
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math.OC 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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New results on the local linear convergence of ADMM: a joint approach
A joint spectral-radius technique for the product of two ADMM matrices tightens local linear convergence bounds compared with separate norm products.