This paper is devoted to the analysis of worst case complexity bounds for linesearch-type derivative-free algorithms for the minimization of general non-convex smooth functions. We consider a derivative-free algorithm based on a linesearch extrapolation technique. First we prove that it enjoys the same complexity properties which have been proved for pattern and direct search algorithms, namely that the number of iterations and of function evaluations required to drive the norm of the gradient of the objective function below a given threshold eps for the first time is O(eps^−2) in the worst case. This is the first contribution proving worst-case complexity properties for derivative-free linesearch-type algorithms. Then we show that the lineasearch approach used by the described algorithm allows us to guarantee the further property that the number of iterations such that the norm of the gradient is bigger than eps is O(eps^−2) in the worst case.
Dettaglio pubblicazione
2024, JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS, Pages 1-36
Worst Case Complexity Bounds for Linesearch-Type Derivative-Free Algorithms (01a Articolo in rivista)
Brilli A., Kimiaei M., Liuzzi Giampaolo, Lucidi Stefano
keywords