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, bringing some unexpected obstacles to these methods. In this paper, we present a generative adversarial nets-based optimizer (OPT-GAN) to adapt to diverse black-box problems via estimating the distribution of optima. The method learns the extensive distribution of the optimal region dominated by selective and randomly moving candidates, balancing the exploration and exploitation. Experiments conducted on Black-box Optimization Benchmarking (BBOB) problems and several other benchmarks with diversified distributions exhibit that, the OPT-GAN outperforms many traditional and neural net-based BBO algorithms.
翻译:黑盒优化(BBO)算法涉及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,如高斯尼。然而,复杂的现实世界问题,特别是当希望全球最佳时,可能与先验假设相去甚远,因为它们具有多样性,给这些方法带来了一些出乎意料的障碍。在本文中,我们提出了一个基于网络的基因对抗性优化(OPT-GAN),以通过估计opima的分布来适应不同的黑盒问题。该方法学习了由选择性和随机移动的候选人主导的最佳区域的广泛分布,平衡了勘探和开发。在黑盒优化基准(BBOB)问题上进行的实验以及其他一些有多样化分布展览的基准,即OF-GAN比许多传统和神经网络的BBO算法要优于许多传统和神经网络。