The paper addresses the limitations of existing TrEO studies that often focus on empirical analyses using synthetic benchmark functions in idealized settings. It adopts a benchmarking approach to evaluate the performance of various TrEO algorithms in realistic scenarios.
The benchmark suite comprises three practical optimization problems:
The authors analyze the characteristics of transfer optimization of big task instances and present the benchmarking problem-suite categories. They investigate three fundamental characteristics of TrEO problems related to Big Volume, Big Variety, and Big Velocity, which shape the performance and effectiveness of TrEO algorithms in real-world problem-solving scenarios.
The paper provides a comprehensive evaluation of state-of-the-art TrEO algorithms, including CGA, EKT, AMTEA, and sTrEO, across the proposed benchmark problems. The results demonstrate the challenges posed by the "no free lunch theorem" in transfer optimization, where no single algorithm universally outperforms others across diverse problem types.
In eine andere Sprache
aus dem Quellinhalt
arxiv.org
Wichtige Erkenntnisse aus
by Yaqing Hou,W... um arxiv.org 04-23-2024
https://arxiv.org/pdf/2404.13377.pdfTiefere Fragen