SOTAVerified

PlatMetaX: An Integrated MATLAB platform for Meta-Black-Box Optimization

2025-03-26Code Available1· sign in to hype

Xu Yang, Rui Wang, Kaiwen Li, Wenhua Li, Tao Zhang, Fujun He

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

The landscape of optimization problems has become increasingly complex, necessitating the development of advanced optimization techniques. Meta-Black-Box Optimization (MetaBBO), which involves refining the optimization algorithms themselves via meta-learning, has emerged as a promising approach. Recognizing the limitations in existing platforms, we presents PlatMetaX, a novel MATLAB platform for MetaBBO with reinforcement learning. PlatMetaX integrates the strengths of MetaBox and PlatEMO, offering a comprehensive framework for developing, evaluating, and comparing optimization algorithms. The platform is designed to handle a wide range of optimization problems, from single-objective to multi-objective, and is equipped with a rich set of baseline algorithms and evaluation metrics. We demonstrate the utility of PlatMetaX through extensive experiments and provide insights into its design and implementation. PlatMetaX is available at: https://github.com/Yxxx616/PlatMetaX.

Tasks

Reproductions