A wealth of interesting problems in engineering, control, finance, and statistics can be formulated as optimization problems involving the eigenvalues of a matrix function. These very challenging problems cannot usually be solved via traditional techniques for nonlinear optimization. However, they have been addressed in recent years by a combination of deep, elegant mathematical analysis and ingenious algorithmic and software development. In this workshop, three leading experts will discuss applications along with the theoretical and algorithmic aspects of this fascinating topic.
- Go to the talk on Semidefinite Programming (by Prof. Stephen Boyd)
- Go to the talk on Eigenvalue Optimization: Symmetric versus Nonsymmetric Matrices (by Prof. Adrian Lewis)
- Go to the talk on Local Optimization of Stability Functions in Theory and Practice (by Prof. Michael Overton)
Remark: This workshop was held on October 7, 2004 as part of the Computational Sciences Lecture Series (CSLS) at the University of Wisconsin-Madison.



Workshop 4
