This paper analyzes the performance of the Fractal Decomposition Algorithm (FDA) metaheuristic applied to low-dimensional continuous optimization problems. This algorithm was originally developed specifically to deal efficiently with high-dimensional continuous optimization problems by building a fractal-based search tree with a branching factor linearly proportional to the number of dimensions. Here, we aim to answer the question of whether FDA could be equally effective for low-dimensional problems. For this purpose, we evaluate the performance of FDA on the Black Box Optimization Benchmark (BBOB) for dimensions 2, 3, 5, 10, 20, and 40. The experimental results show that overall the FDA in its current form does not perform well enough. Among different function groups, FDA shows its best performance on Misc. moderate and Weak structure functions.
翻译:本文分析了用于低维连续优化问题的分形分解分解成算法(FDA)测算仪的性能,这一算法最初是专门用来通过建立一个分形搜索树来有效处理高维连续优化问题的,其分形搜索树的分层系数与尺寸数量成线成正比。这里我们的目的是回答林业发展局是否能够对低维问题同样有效的问题。为此目的,我们评估林业发展局在BBOB第2、3、5、10、20和40维度的黑盒优化基准(BBOBB)方面的性能。实验结果表明,目前形式的林业发展局整体表现不理想。在不同的职能组中,林业发展局在Misc.中度和弱度结构功能上表现最佳。