2021
DOI: 10.48550/arxiv.2109.12604
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Accelerated primal-dual methods for linearly constrained convex optimization problems

Abstract: This work proposes an accelerated primal-dual dynamical system for affine constrained convex optimization and presents a class of primal-dual methods with nonergodic convergence rates. In continuous level, exponential decay of a novel Lyapunov function is established and in discrete level, implicit, semi-implicit and explicit numerical discretizations for the continuous model are considered sequentially and lead to new accelerated primal-dual methods for solving linearly constrained optimization problems. Spec… Show more

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Cited by 5 publications
(14 citation statements)
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References 64 publications
(132 reference statements)
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“…Proof. The proof of ( 74) is more or less in line with that of the decay estimate in [80,Theorem 4.1]. The key is to start with the identity…”
Section: B Some Sequences and Decay Ratesmentioning
confidence: 59%
See 3 more Smart Citations
“…Proof. The proof of ( 74) is more or less in line with that of the decay estimate in [80,Theorem 4.1]. The key is to start with the identity…”
Section: B Some Sequences and Decay Ratesmentioning
confidence: 59%
“…In [81], Luo proposed a first-order dynamical system and presented a class of primal-dual algorithms for (6) with nonergodic rates. Later in [80], we combined this model with Nesterov accelerated gradient flow [82] and obtained the so-called accelerated primal-dual flow. We also proposed new accelerated primal-dual algorithms and proved nonergodic convergence rates via a discrete Lyapunov function.…”
Section: Dynamical System Approachmentioning
confidence: 99%
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“…Attouch et al [4] proposed a temporally rescaled inertial augmented Lagrangian system (TRIALS) with three time-varying parameters (i.e., viscous damping, extrapolation and temporal scaling) to address separable smooth/nonsmooth convex optimization problems with an affine constraint, and presented the fast convergence properties of TRIALS. In addition, He et al [31] and Luo et al [39] further proposed a "second-order"+"first-order" primal-dual dynamical approaches for solving problem (1.7) with accelerated convergence guarantees.…”
mentioning
confidence: 99%