A Standardized Benchmark Set of Clustering Problem Instances for Comparing Black-Box Optimizers
Diederick Vermetten, Catalin-Viorel Dinu, Marcus Gallagher

TL;DR
This paper introduces a standardized, open-source benchmark suite based on data clustering problems to evaluate continuous black-box optimization algorithms, addressing the need for diverse and representative test problems.
Contribution
The paper presents a new benchmark set for continuous black-box optimization based on clustering problems, including analysis and integration with existing benchmarking frameworks.
Findings
Benchmark set covers diverse problem characteristics.
Modular CMA-ES configurations evaluated on the benchmark.
Exploratory landscape analysis used to understand problem diversity.
Abstract
One key challenge in optimization is the selection of a suitable set of benchmark problems. A common goal is to find functions which are representative of a class of real-world optimization problems in order to ensure findings on the benchmarks will translate to relevant problem domains. While some problem characteristics are well-covered by popular benchmarking suites, others are often overlooked. One example of such a problem characteristic is permutation invariance, where the search space consists of a set of symmetrical search regions. This type of problem occurs e.g. when a set of solutions has to be found, but the ordering within this set does not matter. The data clustering problem, often seen in machine learning contexts, is a clear example of such an optimization landscape, and has thus been proposed as a base from which optimization benchmarks can be created. In addition to…
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Taxonomy
TopicsMetaheuristic Optimization Algorithms Research
MethodsSparse Evolutionary Training · Balanced Selection
