A federated data-driven evolutionary algorithm

作者:

Highlights:

摘要

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.

论文关键词:Data-driven evolutionary optimization,Distributed optimization,Federated learning,RBFN surrogate model

论文评审过程:Received 1 September 2021, Revised 9 September 2021, Accepted 20 September 2021, Available online 28 September 2021, Version of Record 6 October 2021.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107532