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COCO: The Experimental Procedure

03/29/2016
by   Nikolaus Hansen, et al.
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We present a budget-free experimental setup and procedure for benchmarking numericaloptimization algorithms in a black-box scenario. This procedure can be applied with the COCO benchmarking platform. We describe initialization of and input to the algorithm and touch upon therelevance of termination and restarts.

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