Many interesting optimization problems are nonsmooth, i.e. either the function to be optimized or an associated constraint is not differentiable on some part of its domain. The main goal of this project is the design of efficient algorithms for some important classes of nonsmooth optimization problems. This is possible only by taking full advantage of the structure which is present. Because of the lack of smoothness, standard algorithms are not applicable. The investigation primarily addresses three issues. The first is the optimization of eigenvalues of symmetric matrices which depend on parameters. Typically, solutions involve multiple eigenvalues which are not smooth functions of the matrix elements. Applications of interest include the optimal design of columns and plates against buckling. The second major issue is the design of methods for a broad problem class: convex composite optimization. By appropriate parameterization of the generalized gradient set it is hoped to obtain efficient methods with superlinear convergence. The third issue concerns non-Lipschitz optimization problems involving eigenvalues of nonsymmetric matrices. For example, an important application arising in the stability of control systems is to minimize the spectral radius of a matrix.

Agency
National Science Foundation (NSF)
Institute
Division of Computer and Communication Foundations (CCF)
Application #
9101640
Program Officer
S. Kamal Abdali
Project Start
Project End
Budget Start
1991-08-01
Budget End
1995-07-31
Support Year
Fiscal Year
1991
Total Cost
$196,951
Indirect Cost
Name
New York University
Department
Type
DUNS #
City
New York
State
NY
Country
United States
Zip Code
10012