PS-AAS: Portfolio Selection for Automated Algorithm Selection in Black-Box Optimization
Ana Kostovska, Gjorgjina Cenikj, Diederick Vermetten, Anja Jankovic,, Ana Nikolikj, Urban Skvorc, Peter Korosec, Carola Doerr, Tome Eftimov

TL;DR
This paper introduces PS-AAS, a data-driven portfolio selection method for automated algorithm selection in black-box optimization, using meta-representations and graph algorithms to create diverse, effective algorithm portfolios.
Contribution
The paper proposes a novel portfolio selection technique based on meta-representations and graph algorithms, improving over greedy methods in automated algorithm selection.
Findings
Performance2Vec-based portfolios favor small, effective portfolios.
SHAP-based portfolios offer higher flexibility but slightly lower performance.
Personalized portfolios outperform classical greedy approaches and full portfolios.
Abstract
The performance of automated algorithm selection (AAS) strongly depends on the portfolio of algorithms to choose from. Selecting the portfolio is a non-trivial task that requires balancing the trade-off between the higher flexibility of large portfolios with the increased complexity of the AAS task. In practice, probably the most common way to choose the algorithms for the portfolio is a greedy selection of the algorithms that perform well in some reference tasks of interest. We set out in this work to investigate alternative, data-driven portfolio selection techniques. Our proposed method creates algorithm behavior meta-representations, constructs a graph from a set of algorithms based on their meta-representation similarity, and applies a graph algorithm to select a final portfolio of diverse, representative, and non-redundant algorithms. We evaluate two distinct meta-representation…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Metaheuristic Optimization Algorithms Research · Evolutionary Algorithms and Applications
