Authors
Bowen Zhao, Wei-Neng Chen, Xiaoguo Li, Ximeng Liu, Qingqi Pei, Jun Zhang
Publication date
2024/1/8
Journal
IEEE Computational Intelligence Magazine
Volume
19
Issue
1
Pages
66-74
Publisher
IEEE
Description
Recently, evolutionary computation (EC) has experienced significant advancements due to the integration of machine learning, distributed computing, and big data technologies. These developments have led to new research avenues in EC, such as distributed EC and surrogate-assisted EC. While these advancements have greatly enhanced the performance and applicability of EC, they have also raised concerns regarding privacy leakages, specifically the disclosure of optimal results and surrogate models. Consequently, the combination of evolutionary computation and privacy protection becomes an increasing necessity. However, a comprehensive exploration of privacy concerns in evolutionary computation is currently lacking, particularly in terms of identifying the object, motivation, position, and method of privacy protection. To address this gap, this paper aims to discuss three typical optimization paradigms …
Total citations
2023202413
Scholar articles
B Zhao, WN Chen, X Li, X Liu, Q Pei, J Zhang - IEEE Computational Intelligence Magazine, 2024