The solution of a large-scale linear, integer, or mixed integer programming problem is often facilitated by the exploitation of special structure in the model. This paper presents heuristic algorithms for identifying embedded network rows within the coefficient matrix of such models. The problem of identifying a maximum-size embedded pure network is shown to be among the class of NP-hard problems. The polynomially-bounded, efficient algorithms presented here do not guarantee network sets of maximum size. However, upper bounds on the size of the maximum network set are developed and used to show that our algorithms identify embedded networks of close to maximum size. Computational tests with large-scale, real-world models are presented
Within the realm of computational methods, there has been a long-standing trade-off between the scal...
In the paper we consider the linear underdetermined system of a special type is considered. Systems ...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...
The solution of a contemporary large-scale linear, integer, or mixed-integer programming problem is ...
This paper discusses automatic detection and expZoitution of embedded structure i n Large-Scale Line...
appears in Large-Scale Linear Programming, eds. Dantzig, G., et al., IIASA, Laxenburg, Austria, pp. ...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Li...
Mathematical Programming, 32, pp. 11-31.If a linear program tLP) possesses a large generalized netwo...
An embedded network within a linear program is, roughly speaking, a subset of constraints that repre...
This paper discusses automatic detection and exploitation of structural redundancy in large-scale ma...
We consider algorithms for solving linear systems with embedded network structure. We investigate pr...
AbstractIt is shown that the problem of detecting a maximum embedded network in a linear program is ...
SIGLECopy held by FIZ Karlsruhe; available from UB/TIB Hannover / FIZ - Fachinformationszzentrum Kar...
AbstractWe study the problem of detecting a maximum embedded network submatrix in a {−1,0,+1}-matrix...
Missing page 32.Factorization of linear programming (LP) models enables a large portion of the LP ta...
Within the realm of computational methods, there has been a long-standing trade-off between the scal...
In the paper we consider the linear underdetermined system of a special type is considered. Systems ...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...
The solution of a contemporary large-scale linear, integer, or mixed-integer programming problem is ...
This paper discusses automatic detection and expZoitution of embedded structure i n Large-Scale Line...
appears in Large-Scale Linear Programming, eds. Dantzig, G., et al., IIASA, Laxenburg, Austria, pp. ...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Li...
Mathematical Programming, 32, pp. 11-31.If a linear program tLP) possesses a large generalized netwo...
An embedded network within a linear program is, roughly speaking, a subset of constraints that repre...
This paper discusses automatic detection and exploitation of structural redundancy in large-scale ma...
We consider algorithms for solving linear systems with embedded network structure. We investigate pr...
AbstractIt is shown that the problem of detecting a maximum embedded network in a linear program is ...
SIGLECopy held by FIZ Karlsruhe; available from UB/TIB Hannover / FIZ - Fachinformationszzentrum Kar...
AbstractWe study the problem of detecting a maximum embedded network submatrix in a {−1,0,+1}-matrix...
Missing page 32.Factorization of linear programming (LP) models enables a large portion of the LP ta...
Within the realm of computational methods, there has been a long-standing trade-off between the scal...
In the paper we consider the linear underdetermined system of a special type is considered. Systems ...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...