Title :
Dual variable metric algorithms for constrained optimization
Author_Institution :
Cornell University, Ithaca, NY
Abstract :
We present a class of algorithms for solving constrained optimization problems. In the algorithm non-negatively constrained quadratic programming subproblems are iteratively solved to obtain estimates of Lagrange multipliers and with these estimates a sequence of points which converges to the solution is generated. To achieve a superlinear rate of convergence the matrix appearing in the subproblem is required to be an approximate inverse of the Hessian of the Lagrangian or a penalty Lagrangian. Some well-known variable metric updates such as the BFGS update are employed to generate the matrix and the resulting algorithm converges locally with a superlinear rate.
Keywords :
Computer science; Constraint optimization; Convergence of numerical methods; H infinity control; Iterative algorithms; Lagrangian functions; Minimization methods; Quadratic programming;
Conference_Titel :
Decision and Control including the 15th Symposium on Adaptive Processes, 1976 IEEE Conference on
Conference_Location :
Clearwater, FL, USA
DOI :
10.1109/CDC.1976.267780