This paper describes two optimal subgradient algorithms for solving structured large-scale convex constrained optimization. More specifically, the first algorithm is optimal for smooth problems with Lipschitz continuous gradients and for Lipschitz continuous nonsmooth problems, and the second algorithm is optimal for Lipschitz continuous nonsmooth problems. In addition, we consider two classes of problems: (i) a convex objective with a simple closed convex domain, where the orthogonal projection onto this feasible domain is efficiently available; and (ii) a convex objective with a simple convex functional constraint. If we equip our algorithms with an appropriate prox-function, then the associated subproblem can be solved either in a closed...
In den letzten Jahrzehnten hat die konvexe Optimierung enorme Aufmerksamkeit erhalten und sich aufgr...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
This paper shows that the optimal subgradient algorithm, OSGA, proposed in [59] can be used for solv...
This paper shows that the optimal subgradient algorithm (OSGA)—which uses first-order information to...
This chapter is devoted to the blackbox subgradient algorithms with the minimal requirements for the...
This paper shows that the OSGA algorithm – which uses first-order information to solve convex optimi...
This paper presents an acceleration of the optimal subgradient algorithm OSGA (Neumaier in Math Prog...
This paper presents an acceleration of the optimal subgradient algorithm OSGA [30] for solving conve...
In this paper, we propose an efficient approach for solving a class of large-scale convex optimizati...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
This paper studies the computational properties of the optimal subgradient algorithm (OSGA) for appl...
In this thesis, we develop block-decomposition (BD) methods and variants of accelerated *9gradient m...
Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq)Fundação de Amparo à Pesquisa do...
We survey incremental methods for minimizing a sum ∑m i=1 fi(x) consisting of a large number of conv...
In den letzten Jahrzehnten hat die konvexe Optimierung enorme Aufmerksamkeit erhalten und sich aufgr...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
This paper shows that the optimal subgradient algorithm, OSGA, proposed in [59] can be used for solv...
This paper shows that the optimal subgradient algorithm (OSGA)—which uses first-order information to...
This chapter is devoted to the blackbox subgradient algorithms with the minimal requirements for the...
This paper shows that the OSGA algorithm – which uses first-order information to solve convex optimi...
This paper presents an acceleration of the optimal subgradient algorithm OSGA (Neumaier in Math Prog...
This paper presents an acceleration of the optimal subgradient algorithm OSGA [30] for solving conve...
In this paper, we propose an efficient approach for solving a class of large-scale convex optimizati...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
This paper studies the computational properties of the optimal subgradient algorithm (OSGA) for appl...
In this thesis, we develop block-decomposition (BD) methods and variants of accelerated *9gradient m...
Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq)Fundação de Amparo à Pesquisa do...
We survey incremental methods for minimizing a sum ∑m i=1 fi(x) consisting of a large number of conv...
In den letzten Jahrzehnten hat die konvexe Optimierung enorme Aufmerksamkeit erhalten und sich aufgr...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...