Hongchao Zhang, Andrew R. Conn
COAP
In this paper we propose extensions to trust-region algorithms in which the classical i step is augmented with a second step that we insist yields a decrease in the value of the objective • function. The classical convergence theory for trust-region algorithms is adapted to this class of two-step algorithms. The algorithms can be applied to any problem with variable(s) whose contribution to the objective function is a known functional form. In the nonlinear programming package LANCELOT, they have been applied to update slack variables and variables introduced to solve minimax problems, leading to enhanced optimization efficiency. Extensive numerical results are presented to show the effectiveness of these techniques.
Hongchao Zhang, Andrew R. Conn
COAP
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