2022
DOI: 10.1007/s10957-022-02048-5
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Proximal Gradient Algorithms Under Local Lipschitz Gradient Continuity

Abstract: Composite optimization offers a powerful modeling tool for a variety of applications and is often numerically solved by means of proximal gradient methods. In this paper, we consider fully nonconvex composite problems under only local Lipschitz gradient continuity for the smooth part of the objective function. We investigate an adaptive scheme for PANOC-type methods (Stella et al. in Proceedings of the IEEE 56th CDC, 2017), namely accelerated linesearch algorithms requiring only the simple oracle of proximal g… Show more

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Cited by 14 publications
(36 citation statements)
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“…Consequently, these proximal gradient-type methods offer a viable way to solve the augmented Lagrangian subproblems, even for fully nonconvex problems. Let us also mention that, at least in [24,37], it has been verified that accumulation points of sequences generated by proximal gradient-type methods are stationary while along the associated subsequence, the iterates are ε k -stationary for a null sequence {ε k }. This requirement is essential in Algorithm 1.…”
Section: Using the Decomposition Lmentioning
confidence: 99%
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“…Consequently, these proximal gradient-type methods offer a viable way to solve the augmented Lagrangian subproblems, even for fully nonconvex problems. Let us also mention that, at least in [24,37], it has been verified that accumulation points of sequences generated by proximal gradient-type methods are stationary while along the associated subsequence, the iterates are ε k -stationary for a null sequence {ε k }. This requirement is essential in Algorithm 1.…”
Section: Using the Decomposition Lmentioning
confidence: 99%
“…Notice that the consequential theory remains valid whenever R n and R m are replaced by finite-dimensional Hilbert spaces X and Y. Moreover, the local Lipschitz continuity in Assumption I(i) is actually superfluous for the augmented Lagrangian framework, but sufficient to solve the arising inner problems via proximal gradient methods [24,37].…”
Section: Assumption Imentioning
confidence: 99%
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