We provide new tools for worst-case performance analysis of the gradient (or steepest descent) method of Cauchy for smooth strongly convex functions, and Newton's method for self-concordant functions, including the case of inexact search directions. The analysis uses semidefinite programming performance estimation, as pioneered by Drori and Teboulle [it Math. Program., 145 (2014), pp. 451--482], and extends recent performance estimation results for the method of Cauchy by the authors [it Optim. Lett., 11 (2017), pp. 1185--1199]. To illustrate the applicability of the tools, we demonstrate a novel complexity analysis of short step interior point methods using inexact search directions. As an example in this framework, we sketch how to give a...
Many modern applications in machine learning, image/signal processing, and statistics require to sol...
We study the worst-case convergence rates of the proximal gradient method for minimizing the sum of ...
Abstract. In this paper we present an extension to SDP of the well known infeasible Interior Point m...
We provide new tools for worst-case performance analysis of the gradient (or steepest descent) metho...
We provide new tools for worst-case performance analysis of the gradient (or steepest descent) metho...
International audienceWe provide new tools for worst-case performance analysis of the gradient (or s...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
Many modern applications in machine learning, image/signal processing, and statistics require to sol...
We study the worst-case convergence rates of the proximal gradient method for minimizing the sum of ...
Abstract. In this paper we present an extension to SDP of the well known infeasible Interior Point m...
We provide new tools for worst-case performance analysis of the gradient (or steepest descent) metho...
We provide new tools for worst-case performance analysis of the gradient (or steepest descent) metho...
International audienceWe provide new tools for worst-case performance analysis of the gradient (or s...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
In this paper we prove that the broad class of direct-search methods of directional type, based on i...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
Many modern applications in machine learning, image/signal processing, and statistics require to sol...
We study the worst-case convergence rates of the proximal gradient method for minimizing the sum of ...
Abstract. In this paper we present an extension to SDP of the well known infeasible Interior Point m...