Several variants of the primal-dual hybrid gradient algorithm with applications

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Abstract

By reviewing the primal-dual hybrid gradient algorithm (PDHG) proposed by He, You and Yuan (SIAM J. Image Sci., 7(4) (2014), pp. 2526-2537), in this paper we introduce four improved schemes for solving a class of saddle-point problems. Convergence properties of the proposed algorithms are ensured based on weak assumptions, where none of the objective functions are assumed to be strongly convex but the step-sizes in the primal-dual updates are more flexible than the previous. By making use of variational analysis, the global convergence and sublinear convergence rate in the ergodic/nonergodic sense are established, and the numerical efficiency of our algorithms is verified by testing an image deblurring problem compared with several existing algorithms.

Original languageEnglish
Pages (from-to)176-199
Number of pages24
JournalNumerical Mathematics
Volume13
Issue number1
DOIs
StatePublished - Feb 2020

Keywords

  • Convergence complexity
  • Image deblurring
  • Primal-dual hybrid gradient algorithm
  • Saddle-point problem
  • Variational inequality

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