Yao Qi, Raja Das, et al.
ISSTA 2009
We propose an indifference-zone approach for a ranking and selection problem with the goal of reducing both the number of simulated samples of the performance and the frequency of configuration changes. We prove that with a prespecified high probability, our algorithm finds the best system configuration. Our proof hinges on several ideas, including the use of Anderson's probability bound, that have not been fully investigated for the ranking and selection problem. Numerical experiments show that our algorithm can select the best system configuration using up to 50% fewer simulated samples than existing algorithms without increasing the frequency of configuration changes. © 2009 ACM.
Yao Qi, Raja Das, et al.
ISSTA 2009
Alessandro Morari, Roberto Gioiosa, et al.
IPDPS 2011
Rajiv Ramaswami, Kumar N. Sivarajan
IEEE/ACM Transactions on Networking
Renu Tewari, Richard P. King, et al.
IS&T/SPIE Electronic Imaging 1996