This paper discusses automatic detection and exploitation of structural redundancy in large-scale mathematical programming models. From our perspective, such redundancy represents embedded special structure which can give significant insight to the model proponent as well as greatly reduce solution effort. We report experiments with real-life linear programming (LP) and mixed-integer (MIP) models in which various methods are developed and tested as integral modules in an optimization system of advanced design. We seek to understand the modeling implications of these embedded redundancies as well as to exploit them during actual optimization. The latter goal places heavy emphasis on efficient, as well as effective, identification techniques ...
The design and control of large-scale engineering systems, consisting of a number of interacting sub...
Large practical linear and integer programming problems are not always presented in a form which is ...
Abstract. In recent years, much work has been done on imple-menting a variety of algorithms in nonli...
appears in Large-Scale Linear Programming, eds. Dantzig, G., et al., IIASA, Laxenburg, Austria, pp. ...
This paper discusses automatic detection and expZoitution of embedded structure i n Large-Scale Line...
In this paper we discuss two statistical techniques for achieving computational economy during the o...
The objective function and the constraints can be formulated as linear functions of independent vari...
The solution of a large-scale linear, integer, or mixed integer programming problem is often facilit...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...
Our work under this support broadly falls into five categories: automatic differentiation, sparsity,...
The recent explosion in size and complexity of datasets and the increased availability of computatio...
Linear Programming is a mathematical technique to help plan and to achieve the best outcome. It will...
Proposed portfolio models are computationally attractive as they give rise to linear and mixed integ...
Optimal design models contain parameters that are fixed during the optimization process. When these ...
In this book, theory of large scale optimization is introduced with case studies of real-world probl...
The design and control of large-scale engineering systems, consisting of a number of interacting sub...
Large practical linear and integer programming problems are not always presented in a form which is ...
Abstract. In recent years, much work has been done on imple-menting a variety of algorithms in nonli...
appears in Large-Scale Linear Programming, eds. Dantzig, G., et al., IIASA, Laxenburg, Austria, pp. ...
This paper discusses automatic detection and expZoitution of embedded structure i n Large-Scale Line...
In this paper we discuss two statistical techniques for achieving computational economy during the o...
The objective function and the constraints can be formulated as linear functions of independent vari...
The solution of a large-scale linear, integer, or mixed integer programming problem is often facilit...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...
Our work under this support broadly falls into five categories: automatic differentiation, sparsity,...
The recent explosion in size and complexity of datasets and the increased availability of computatio...
Linear Programming is a mathematical technique to help plan and to achieve the best outcome. It will...
Proposed portfolio models are computationally attractive as they give rise to linear and mixed integ...
Optimal design models contain parameters that are fixed during the optimization process. When these ...
In this book, theory of large scale optimization is introduced with case studies of real-world probl...
The design and control of large-scale engineering systems, consisting of a number of interacting sub...
Large practical linear and integer programming problems are not always presented in a form which is ...
Abstract. In recent years, much work has been done on imple-menting a variety of algorithms in nonli...