On the impact of the performance metric on efficient algorithm configuration

作者:

摘要

Algorithm configurators are automated methods to optimise the parameters of an algorithm for a class of problems. We analyse the impact of the cutoff time κ (the time spent evaluating a configuration for a problem instance) on the expected number of configuration comparisons required to find the optimal parameter value for the performance metrics (the measure used to judge the performance of a configuration) that compare configurations using either the best-found fitness values or optimisation times. We first prove that the configurators that use optimisation time as performance metric are not able to tune any unary unbiased algorithm for any function with up to an exponential number of optima using . Afterwards, we show that for simple algorithm configuration scenarios the required cutoff time for the optimisation time metric may be considerably larger while using the best fitness metric allows the tuners to configure the target algorithm in linear time in the number of parameters.

论文关键词:Algorithm configurators,Parameter tuning,Runtime analysis,Performance metrics,Cutoff time

论文评审过程:Received 4 December 2019, Revised 26 July 2021, Accepted 4 November 2021, Available online 8 November 2021, Version of Record 24 November 2021.

论文官网地址:https://doi.org/10.1016/j.artint.2021.103629