Parallel and Distributed Methods for Nonconvex Optimization-Part I: Theory
نویسندگان
چکیده
In this two-part paper, we propose a general algorithmic framework for the minimization of a nonconvex smooth function subject to nonconvex smooth constraints. The algorithm solves a sequence of (separable) strongly convex problems and mantains feasibility at each iteration. Convergence to a stationary solution of the original nonconvex optimization is established. Our framework is very general and flexible and unifies several existing Successive Convex Approximation (SCA)-based algorithms More importantly, and differently from current SCA approaches, it naturally leads to distributed and parallelizable implementations for a large class of nonconvex problems. This Part I is devoted to the description of the framework in its generality. In Part II we customize our general methods to several multi-agent optimization problems, mainly in communications and networking; the result is a new class of centralized and distributed algorithms that compare favorably to existing ad-hoc (centralized) schemes.
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Distributed Methods for Constrained Nonconvex Multi-Agent Optimization-Part I: Theory
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