We propose a general feasible method for nonsmooth, nonconvex constrained
optimization problems. The algorithm is based on the (inexact) solution of a
sequence of strongly convex optimization subproblems, followed by a step-size procedure.
Key features of the scheme are: (i) it preserves feasibility of the iterates for
nonconvex problems with nonconvex constraints, (ii) it can handle nonsmooth problems,
and (iii) it naturally leads to parallel/distributed implementations. We illustrate
the application of the method to an open problem in green communications whereby
the energy consumption inMIMO multiuser interference networks is minimized, subject
to nonconvex Quality-of-Service constraints.
Dettaglio pubblicazione
2017, MATHEMATICAL PROGRAMMING, Pages 55-90 (volume: 164)
Feasible methods for nonconvex nonsmooth problems with applications in green communications (01a Articolo in rivista)
Facchinei Francisco, Lampariello Lorenzo, Scutari Gesualdo
Gruppo di ricerca: Continuous Optimization
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