This book covers an introduction to convex optimization, one of the powerful and tractable optimization problems that can be efficiently solved on a computer. The goal of the book is to help develop a sense of what convex optimization is, and how it can be used in a widening array of practical contexts with a particular emphasis on machine learning. The first part of the book covers core concepts of convex sets, convex functions, and related basic definitions that serve understanding convex optimization and its corresponding models. The second part deals with one very useful theory, called duality, which enables us to: (1) gain algorithmic insights; and (2) obtain an approximate solution to non-convex optimization problems which are oft...
This dissertation concerns the development of limited memory steepest descent (LMSD) methods for sol...
Convex optimization has revolutionized the way problems are thought, posed, and solved in many diffe...
Constraint optimization problems with multiple constraints and a large solution domain are NP hard a...
Paaßen B, Artelt A, Hammer B. Lecture Notes on Applied Optimization. Faculty of Technology, Bielefel...
In this thesis, we investigate various optimization problems motivated by applications in modern-day...
Emphasizing practical understanding over the technicalities of specific algorithms, this elegant tex...
In this thesis, we touched upon the concept of convexity which is one of the essential topics in opt...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
This book is about learning for problem solving. [...] Human problem solving is strongly connected t...
In this thesis three solution approaches for multiobjective nonlinear optimization problems are disc...
This book provides a comprehensive, modern introduction to convex optimization, a field that is beco...
This is a collection of additional exercises, meant to supplement those found in the book Convex Opt...
In most real-life problems, the decision alternatives are evaluated with multiple conflicting criter...
This book provides a comprehensive, modern introduction to convex optimization, a field that is beco...
Linear programming (LP) and semidefinite programming (SDP) are among the most important tools in Ope...
This dissertation concerns the development of limited memory steepest descent (LMSD) methods for sol...
Convex optimization has revolutionized the way problems are thought, posed, and solved in many diffe...
Constraint optimization problems with multiple constraints and a large solution domain are NP hard a...
Paaßen B, Artelt A, Hammer B. Lecture Notes on Applied Optimization. Faculty of Technology, Bielefel...
In this thesis, we investigate various optimization problems motivated by applications in modern-day...
Emphasizing practical understanding over the technicalities of specific algorithms, this elegant tex...
In this thesis, we touched upon the concept of convexity which is one of the essential topics in opt...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
This book is about learning for problem solving. [...] Human problem solving is strongly connected t...
In this thesis three solution approaches for multiobjective nonlinear optimization problems are disc...
This book provides a comprehensive, modern introduction to convex optimization, a field that is beco...
This is a collection of additional exercises, meant to supplement those found in the book Convex Opt...
In most real-life problems, the decision alternatives are evaluated with multiple conflicting criter...
This book provides a comprehensive, modern introduction to convex optimization, a field that is beco...
Linear programming (LP) and semidefinite programming (SDP) are among the most important tools in Ope...
This dissertation concerns the development of limited memory steepest descent (LMSD) methods for sol...
Convex optimization has revolutionized the way problems are thought, posed, and solved in many diffe...
Constraint optimization problems with multiple constraints and a large solution domain are NP hard a...