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Abstract
Dynamic Algorithm Configuration (DAC) tackles the question of how to automatically learn policies to control parameters of algorithms in a data-driven fashion. This question has received considerable attention from the evolutionary community in recent years. Having a good benchmark collection to gain structural understanding on the effectiveness and limitations of different solution methods for DAC is therefore strongly desirable. Following recent work on proposing DAC benchmarks with well-understood theoretical properties and ground truth information, in this work, we suggest as a new DAC benchmark the controlling of the key parameter λ in the (1 + (λ, λ)) Genetic Algorithm for solving OneMax problems. We conduct a study on how to solve the DAC problem via the use of (static) automated algorithm configuration on the benchmark, and propose techniques to significantly improve the performance of the approach. Our approach is able to consistently outperform the default parameter control policy of the benchmark derived from previous theoretical work on sufficiently large problem sizes. We also present new findings on the landscape of the parameter-control search policies and propose methods to compute stronger baselines for the benchmark via numerical approximations of the true optimal policies.
Original language | English |
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Title of host publication | FOGA'23 |
Subtitle of host publication | proceedings of the 17th ACM/SIGEVO conference on Foundations of Genetic Algorithms |
Editors | Francisco Chicano, Tobias Friedrich, Timo Kötzing, Franz Rothlauf |
Place of Publication | New York, NY |
Publisher | ACM |
Pages | 38-49 |
Number of pages | 12 |
ISBN (Electronic) | 9798400702020 |
DOIs | |
Publication status | Published - 30 Aug 2023 |
Keywords
- Evolultionary computation
- Algorithm configuration
- Parameter control
- Genetic algorithms
- Benchmarking
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Dive into the research topics of 'Using automated algorithm configuration for parameter control'. Together they form a unique fingerprint.Projects
- 1 Finished
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Early Career Fellowship - Nguyen Dang: Constraint-based automated generation of synthetic benchmark instances
Dang, N. T. T. (PI)
1/09/20 → 31/08/23
Project: Fellowship