杠杆(统计)
计算机科学
进化算法
水准点(测量)
计算智能
全局优化
进化计算
最优化问题
数学优化
替代模型
机器学习
人工智能
数据挖掘
算法
数学
地理
大地测量学
作者
Jinjin Xu,Yaochu Jin,Wenli Du
标识
DOI:10.1007/s40747-021-00506-7
摘要
Abstract Data-driven optimization has found many successful applications in the real world and received increased attention in the field of evolutionary optimization. Most existing algorithms assume that the data used for optimization are always available on a central server for construction of surrogates. This assumption, however, may fail to hold when the data must be collected in a distributed way and are subject to privacy restrictions. This paper aims to propose a federated data-driven evolutionary multi-/many-objective optimization algorithm. To this end, we leverage federated learning for surrogate construction so that multiple clients collaboratively train a radial-basis-function-network as the global surrogate. Then a new federated acquisition function is proposed for the central server to approximate the objective values using the global surrogate and estimate the uncertainty level of the approximated objective values based on the local models. The performance of the proposed algorithm is verified on a series of multi-/many-objective benchmark problems by comparing it with two state-of-the-art surrogate-assisted multi-objective evolutionary algorithms.
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