TY - JOUR
T1 - The irace Package: Iterated Racing for Automatic Algorithm Configuration
AU - Lopez-Ibanez, Manuel
AU - Dubois-Lacoste, Jérémie
AU - Cáceres , Leslie Pérez
AU - Birattari, Mauro
AU - Stützle, Thomas
PY - 2016
Y1 - 2016
N2 - Modern optimization algorithms typically require the setting of a large number of parameters to optimize their performance. The immediate goal of automatic algorithm configuration is to find, automatically, the best parameter settings of an optimizer. Ultimately, automatic algorithm configuration has the potential to lead to new design paradigms for optimization software. The iracepackage is a software package that implements a number of automatic configuration procedures. In particular, it offers iterated racing procedures, which have been used successfully to automatically configure various state-of-the-art algorithms. The iterated racing procedures implemented in iraceinclude the iterated F-race algorithm and several extensions and improvements over it. In this paper, we describe the rationale underlying the iterated racing procedures and introduce a number of recent extensions. Among these, we introduce a restart mechanism to avoid premature convergence, the use of truncated sampling distributions to handle correctly parameter bounds, and an elitist racing procedure for ensuring that the best configurations returned are also those evaluated in the highest number of training instances. We experimentally evaluate the most recent version of iraceand demonstrate with a number of example applications the use and potential of irace, in particular, and automatic algorithm configuration, in general.
AB - Modern optimization algorithms typically require the setting of a large number of parameters to optimize their performance. The immediate goal of automatic algorithm configuration is to find, automatically, the best parameter settings of an optimizer. Ultimately, automatic algorithm configuration has the potential to lead to new design paradigms for optimization software. The iracepackage is a software package that implements a number of automatic configuration procedures. In particular, it offers iterated racing procedures, which have been used successfully to automatically configure various state-of-the-art algorithms. The iterated racing procedures implemented in iraceinclude the iterated F-race algorithm and several extensions and improvements over it. In this paper, we describe the rationale underlying the iterated racing procedures and introduce a number of recent extensions. Among these, we introduce a restart mechanism to avoid premature convergence, the use of truncated sampling distributions to handle correctly parameter bounds, and an elitist racing procedure for ensuring that the best configurations returned are also those evaluated in the highest number of training instances. We experimentally evaluate the most recent version of iraceand demonstrate with a number of example applications the use and potential of irace, in particular, and automatic algorithm configuration, in general.
U2 - 10.1016/j.orp.2016.09.002
DO - 10.1016/j.orp.2016.09.002
M3 - Article
SN - 2214-7160
VL - 3
SP - 43
EP - 58
JO - Operations Research Perspectives
JF - Operations Research Perspectives
IS - 0
ER -