Data-driven evolutionary optimization has witnessed great success in solving complex real-world optimization problems. However, existing data-driven optimization algorithms require that all data are centrally stored, which is not always practical and may be vulnerable to privacy leakage and security threats if the data must be collected from different devices. To address the above issue, this paper proposes a federated data-driven evolutionary optimization framework that is able to perform data driven optimization when the data is distributed on multiple devices. On the basis of federated learning, a sorted model aggregation method is developed for aggregating local surrogates based on radial-basis-function networks. In addition, a federated surrogate management strategy is suggested by designing an acquisition function that takes into account the information of both the global and local surrogate models. Empirical studies on a set of widely used benchmark functions in the presence of various data distributions demonstrate the effectiveness of the proposed framework.
翻译:数据驱动的进化优化在解决复杂的现实世界优化问题方面取得了巨大成功,然而,现有的数据驱动优化算法要求所有数据都集中储存,这并不总是实用的,如果数据必须从不同装置收集,则可能容易发生隐私泄漏和安全威胁。为了解决上述问题,本文件建议建立一个数据驱动的进化优化联合框架,在数据在多个装置上分配时能够进行数据驱动优化。在联合学习的基础上,开发了一种分类模型汇总方法,以汇集基于辐射基站功能网络的本地替代机器人。此外,还提出一个联合替代管理战略,即设计一种获取功能,考虑到全球和地方替代模型的信息。关于一套广泛使用的基准功能的实验研究,在各种数据分布中展示了拟议框架的有效性。