MATE: A Model-Based Algorithm Tuning Engine A Proof of Concept Towards Transparent Feature-Dependent Parameter Tuning Using Symbolic Regression

In this paper, we introduce a Model-based Algorithm Tuning Engine, namely MATE, where the parameters of an algorithm are represented as expressions of the features of a target optimisation problem. In contrast to most static (feature-independent) algorithm tuning engines such as irace and SPOT, our...

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Bibliographic Details
Published inEvolutionary Computation in Combinatorial Optimization pp. 51 - 67
Main Authors El Yafrani, Mohamed, Scoczynski, Marcella, Sung, Inkyung, Wagner, Markus, Doerr, Carola, Nielsen, Peter
Format Book Chapter
LanguageEnglish
Published Cham Springer International Publishing 27.03.2021
SeriesLecture Notes in Computer Science
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ISBN3030729036
9783030729035
ISSN0302-9743
1611-3349
DOI10.1007/978-3-030-72904-2_4

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Summary:In this paper, we introduce a Model-based Algorithm Tuning Engine, namely MATE, where the parameters of an algorithm are represented as expressions of the features of a target optimisation problem. In contrast to most static (feature-independent) algorithm tuning engines such as irace and SPOT, our approach aims to derive the best parameter configuration of a given algorithm for a specific problem, exploiting the relationships between the algorithm parameters and the features of the problem. We formulate the problem of finding the relationships between the parameters and the problem features as a symbolic regression problem and we use genetic programming to extract these expressions in a human-readable form. For the evaluation, we apply our approach to the configuration of the (1 + 1) EA and RLS algorithms for the OneMax, LeadingOnes, BinValue and Jump optimisation problems, where the theoretically optimal algorithm parameters to the problems are available as functions of the features of the problems. Our study shows that the found relationships typically comply with known theoretical results – this demonstrates (1) the potential of model-based parameter tuning as an alternative to existing static algorithm tuning engines, and (2) its potential to discover relationships between algorithm performance and instance features in human-readable form.
ISBN:3030729036
9783030729035
ISSN:0302-9743
1611-3349
DOI:10.1007/978-3-030-72904-2_4