Generalized Pattern Searches With Derivative Information
Abstract
A common question asked by users of direct search algorithms is how to use derivative information at iterates where it is available. This paper addresses that question with respect to Generalized Pattern Search (GPS) methods for unconstrained and linearly constrained optimization. Specifically this paper concentrates on the GPS poll step. Polling is done to certify the need to refine the current mesh, and it requires O(n) function evaluations in the worst case. We show that the use of derivative information significantly reduces the maximum number of function evaluations necessary for poll steps, even to a worst case of a single function evaluation with certain algorithmic choices given here. Furthermore, we show that rather rough approximations to the gradient are sufficient to reduce the poll step to a single function evaluation. We prove that using these less expensive poll steps does not weaken the known convergence properties of the method, all of which depend only on the poll step.
Document Details
- Document Type
- Technical Report
- Publication Date
- May 23, 2003
- Accession Number
- ADA455374
Entities
People
- Charles Audet
- J. E. Dennis Jr.
- Mark A. Abramson
Organizations
- Air Force Institute of Technology