Enhancing Parameter Control Policies with State Information
Gianluca Covini, Denis Antipov, Carola Doerr

TL;DR
This paper introduces new benchmarks for parameter control policies in evolutionary algorithms, demonstrating how additional state information can significantly improve algorithm performance and speed up optimization.
Contribution
It proposes four new benchmarks with derived optimal or near-optimal control policies that leverage richer state information for better parameter choices.
Findings
Using current extsc{OneMax} value improves parameter decisions.
Additional state information leads to notable runtime speed-ups.
Benchmarks serve as challenging testbeds for parameter control analysis.
Abstract
Parameter control and dynamic algorithm configuration study how to dynamically choose suitable configurations of a parametrized algorithm during the optimization process. Despite being an intensively researched topic in evolutionary computation, optimal control policies are known only for very few cases, limiting the development of automated approaches to achieve them. With this work we propose four new benchmarks for which we derive optimal or close-to-optimal control policies. More precisely, we consider the optimization of the \LeadingOnes function via RLS, a local search algorithm allowing for a dynamic choice of the mutation strength . The benchmarks differ in which information the algorithm can exploit to set its parameters and to select offspring. In existing running time results, the exploitable information is typically limited to the quality of the current-best…
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