A golden ratio primal-dual algorithm for structured convex optimization
Journal of Scientific Computing, 2020 We design, analyze and test a golden ratio primal-dual algorithm (GRPDA) for solving structured convex optimization problem, where the objective function is the sum of two closed proper convex functions, one of which involves a composition with a linear transfor...
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Zusammenfassung: | Journal of Scientific Computing, 2020 We design, analyze and test a golden ratio primal-dual algorithm (GRPDA) for
solving structured convex optimization problem, where the objective function is
the sum of two closed proper convex functions, one of which involves a
composition with a linear transform. GRPDA preserves all the favorable features
of the classical primal-dual algorithm (PDA), i.e., the primal and the dual
variables are updated in a Gauss-Seidel manner, and the per iteration cost is
dominated by the evaluation of the proximal point mappings of the two component
functions and two matrix-vector multiplications. Compared with the classical
PDA, which takes an extrapolation step, the novelty of GRPDA is that it is
constructed based on a convex combination of essentially the whole iteration
trajectory. We show that GRPDA converges within a broader range of parameters
than the classical PDA, provided that the reciprocal of the convex combination
parameter is bounded above by the golden ratio, which explains the name of the
algorithm. An O(1/N) ergodic convergence rate result is also established based
on the primal-dual gap function, where N denotes the number of iterations. When
either the primal or the dual problem is strongly convex, an accelerated GRPDA
is constructed to improve the ergodic convergence rate from O(1/N) to O(1/N2).
Moreover, we show for regularized least-squares and linear equality constrained
problems that the reciprocal of the convex combination parameter can be
extended from the golden ratio to 2 and meanwhile a relaxation step can be
taken. Our preliminary numerical results on LASSO, nonnegative least-squares
and minimax matrix game problems, with comparisons to some state-of-the-art
relative algorithms, demonstrate the efficiency of the proposed algorithms. |
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DOI: | 10.48550/arxiv.1910.13260 |