Ετικέτες

Δευτέρα 29 Ιανουαρίου 2018

Data and performance profiles applying an adaptive truncation criterion, within linesearch-based truncated Newton methods, in large scale nonconvex optimization

S23523409.gif

Publication date: April 2018
Source:Data in Brief, Volume 17
Author(s): Andrea Caliciotti, Giovanni Fasano, Stephen G. Nash, Massimo Roma
In this paper, we report data and experiments related to the research article entitled "An adaptive truncation criterion, for linesearch-based truncated Newton methods in large scale nonconvex optimization" by Caliciotti et al. [1]. In particular, in Caliciotti et al. [1], large scale unconstrained optimization problems are considered by applying linesearch-based truncated Newton methods. In this framework, a key point is the reduction of the number of inner iterations needed, at each outer iteration, to approximately solving the Newton equation. A novel adaptive truncation criterion is introduced in Caliciotti et al. [1] to this aim. Here, we report the details concerning numerical experiences over a commonly used test set, namely CUTEst (Gould et al., 2015) [2]. Moreover, comparisons are reported in terms of performance profiles (Dolan and Moré, 2002) [3], adopting different parameters settings. Finally, our linesearch-based scheme is compared with a renowned trust region method, namely TRON (Lin and Moré, 1999) [4].



http://ift.tt/2DKRSA3

Δεν υπάρχουν σχόλια:

Δημοσίευση σχολίου

Αναζήτηση αυτού του ιστολογίου