Publisher:
Aaai Press. Association For The Advancement Of Artificial Intelligence
Issued date:
2017-06-18
Citation:
Fernandez Rebollo, Fernando; De La Rosa Turbides, Tomas Eduardo; Cenamor Guijarro, Isabel Rosario (2017). Performance modelling of planners from homogeneous problem sets. Proceedings of the Twenty-Seventh International Conference on Automated Planning and Scheduling (ICAPS 2017). : Aaai Press. Association For The Advancement Of Artificial Intelligence . Pp. 425-433
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Ministerio de Economía y Competitividad (España)
Sponsor:
This work has been partially supported by the Spanish projects TIN2014-55637-C2-1-R and TIN2015-65686-C5-1-R.
Project:
Gobierno de España. TIN2014-55637-C2-1-R Gobierno de España. TIN2015-65686-C5-1-R
Empirical performance models play an important role in the development of planning portfolios that make a per-domain or per-problem configuration of its search components. Even though such portfolios have shown their power when compared to other systems in curEmpirical performance models play an important role in the development of planning portfolios that make a per-domain or per-problem configuration of its search components. Even though such portfolios have shown their power when compared to other systems in current benchmarks, there is no clear evidence that they are capable to differentiate problems (instances) having similar input properties (in terms of objects, goals, etc.) but fairly different runtime for a given planner. In this paper we present a study of empirical performance models that are trained using problems having the same configuration, with the objective of guiding the models to recognize the underlying differences existing among homogeneous problems. In addition we propose a set of new features that boost the prediction capabilities under such scenarios. The results show that the learned models clearly performed over random classifiers, which reinforces the hypothesis that the selection of planners can be done on a per-instance basis when configuring a portfolio.[+][-]