Computing a sparse Jacobian matrix by rows and columns
- 1 January 1998
- journal article
- research article
- Published by Taylor & Francis in Optimization Methods and Software
- Vol. 10 (1) , 33-48
- https://doi.org/10.1080/10556789808805700
Abstract
Efficient estimation of large sparse Jacobian matrices has been studied extensively in the last couple of years. It has been observed that the estimation of Jacobian matrix can be posed as a graph coloring problem. Elements of the matrix are estimated by taking divided difference in several directions corresponding to a group of structurally independent columns. Another possibility is to obtain the nonzero elements by means of the so called Automatic differentiation, which gives the estimates free of truncation error that one encounters in a divided difference scheme. In this paper we show that it is possible to exploit sparsity both in columns and rows by employing the forward and the reverse mode of Automatic differentiation. A graph-theoretic characterization of the problem is given.Keywords
This publication has 7 references indexed in Scilit:
- Estimation of sparse hessian matrices and graph coloring problemsMathematical Programming, 1984
- Software for estimating sparse Jacobian matricesACM Transactions on Mathematical Software, 1984
- Optimal approximation of sparse hessians and its equivalence to a graph coloring problemMathematical Programming, 1983
- Estimation of Sparse Jacobian Matrices and Graph Coloring BlemsSIAM Journal on Numerical Analysis, 1983
- Automatic Differentiation: Techniques and ApplicationsPublished by Springer Nature ,1981
- On the Estimation of Sparse Hessian MatricesSIAM Journal on Numerical Analysis, 1979
- On the Estimation of Sparse Jacobian MatricesIMA Journal of Applied Mathematics, 1974