Black-box optimization (BBO) algorithms are concerned with finding the best solutions for problems with missing analytical details. Most classical methods for such problems are based on strong and fixed a priori assumptions, such as Gaussianity. However, the complex real-world problems, especially when the global optimum is desired, could be very far from the a priori assumptions because of their diversities, causing unexpected obstacles. In this study, we propose a generative adversarial net-based broad-spectrum global optimizer (OPT-GAN) which estimates the distribution of optimum gradually, with strategies to balance exploration-exploitation trade-off. It has potential to better adapt to the regularity and structure of diversified landscapes than other methods with fixed prior, e.g., Gaussian assumption or separability. Experiments on diverse BBO benchmarks and high dimensional real world applications exhibit that OPT-GAN outperforms other traditional and neural net-based BBO algorithms.
翻译:黑匣子优化(BBO)算法(BBO)关注的是寻找解决缺少分析细节问题的最佳办法。这类问题的大多数典型方法都是基于强烈和固定的先验假设,如高山主义。然而,复杂的现实世界问题,特别是当希望全球最佳时,由于其多样性,可能造成意想不到的障碍,可能远远不是一种先验假设。在本研究中,我们建议采用一种基因化的对称式网基宽光谱全球优化模型(OPT-GAN),该模型对最佳分布进行逐步估计,并采用平衡勘探-开发交易的战略。它有潜力更好地适应多样化地貌的规律和结构,而不是以固定的先前方法,例如高山假设或分离性。关于不同BBO基准和高维真实世界应用的实验显示,OF-GAN比其他传统和神经网基BO算法要优得多。