AVOIDING TRAPS IN NONCONVEX PROBLEMS
Abstract
Iterative projection methods may become trapped at non-solutions when the constraint sets are nonconvex. Two kinds of parameters are available to help avoid this behavior and this study gives examples of both. The first kind of parameter, called a hyperparameter, includes any kind of parameter that appears in the definition of the iteration rule itself. The second kind comprises metric parameters in the definition of the constraint sets, a feature that arises when the problem to be solved has two or more kinds of variables. Through examples we show the importance of properly tuning both kinds of parameters and offer heuristic interpretations of the observed behavior. © 2022 Journal of Applied and Numerical Optimization.
Date Published
Journal
Journal of Applied and Numerical Optimization
Volume
4
Issue
2
Number of Pages
143-159,
URL
http://www.scopus.com/inward/record.uri?eid=2-s2.0-85132916626&doi=10.23952%2fjano.4.2022.2.03&partnerID=40&md5=c6f01abe6d5af2438605a008816a1317
DOI
10.23952/jano.4.2022.2.03
Research Area
Group (Lab)
Veit Elser Group