This dissertation concerns the development of limited memory steepest descent (LMSD) methods for solving unconstrained nonlinear optimization problems. In particular, we focus on the class of LMSD methods recently proposed by Fletcher, which he has shown to be competitive with well-known quasi-Newton methods such as L-BFGS. However, in the design of such methods, much work remains to be done. First of all, Fletcher only showed a convergence result for LMSD methods when minimizing strongly convex quadratics, but no convergence rate result. In addition, his method mainly focused on minimizing strongly convex quadratics and general convex objectives, while when it comes to nonconvex objectives, open questions remain about how to effectively de...
In this work we propose some new mechanisms to speedup the convergence of the highly resources (CPU...
We introduce and analyze discontinuous Galerkin methods for a Naghdi type arch model. We prove that,...
The primary focus of this dissertation is the design, analysis, and implementation of numerical meth...
In this thesis, we investigate various optimization problems motivated by applications in modern-day...
First-order methods for solving large scale nonconvex problems have been applied in many areas of ma...
Gradient-based optimization lies at the core of modern machine learning and deep learning, with (sto...
The limited memory steepest descent method (Fletcher, 2012) for unconstrained optimization problems ...
For decades, a great deal of nonlinear optimization research has focused on modeling and solving con...
Gradient descent methods and especially their stochastic variants have become highly popular in the...
The goal of our research is a comprehensive exploration of the power of rescaling to improve the eff...
This thesis addresses computational aspects of discrete conic optimization. Westudy two well-known c...
Optimierungsprobleme und Variationsungleichungen über Banach-Räumen stellen Themen von substanti...
Optimization problems arise naturally in machine learning for supervised problems. A typical example...
Tese de doutoramento do Programa Inter-Universitário de Doutoramento em Matemática, apresentada ao ...
This book covers an introduction to convex optimization, one of the powerful and tractable optimizat...
In this work we propose some new mechanisms to speedup the convergence of the highly resources (CPU...
We introduce and analyze discontinuous Galerkin methods for a Naghdi type arch model. We prove that,...
The primary focus of this dissertation is the design, analysis, and implementation of numerical meth...
In this thesis, we investigate various optimization problems motivated by applications in modern-day...
First-order methods for solving large scale nonconvex problems have been applied in many areas of ma...
Gradient-based optimization lies at the core of modern machine learning and deep learning, with (sto...
The limited memory steepest descent method (Fletcher, 2012) for unconstrained optimization problems ...
For decades, a great deal of nonlinear optimization research has focused on modeling and solving con...
Gradient descent methods and especially their stochastic variants have become highly popular in the...
The goal of our research is a comprehensive exploration of the power of rescaling to improve the eff...
This thesis addresses computational aspects of discrete conic optimization. Westudy two well-known c...
Optimierungsprobleme und Variationsungleichungen über Banach-Räumen stellen Themen von substanti...
Optimization problems arise naturally in machine learning for supervised problems. A typical example...
Tese de doutoramento do Programa Inter-Universitário de Doutoramento em Matemática, apresentada ao ...
This book covers an introduction to convex optimization, one of the powerful and tractable optimizat...
In this work we propose some new mechanisms to speedup the convergence of the highly resources (CPU...
We introduce and analyze discontinuous Galerkin methods for a Naghdi type arch model. We prove that,...
The primary focus of this dissertation is the design, analysis, and implementation of numerical meth...