When Evolutionary Computation Meets Privacy
Bowen Zhao, Wei-Neng Chen, Xiaoguo Li, Ximeng Liu, Qingqi Pei, Jun, Zhang

TL;DR
This paper explores the intersection of evolutionary computation and privacy, analyzing three optimization paradigms and proposing a framework to address privacy concerns while maintaining optimization performance.
Contribution
It introduces BOOM, a framework for characterizing privacy concerns in various evolutionary computation paradigms, and discusses potential privacy-preserving technologies.
Findings
Characterizes privacy concerns in centralized, distributed, and data-driven EC paradigms.
Proposes BOOM to systematically analyze privacy objects and motivations.
Discusses privacy-preserving methods balancing performance and privacy.
Abstract
Recently, evolutionary computation (EC) has been promoted by machine learning, distributed computing, and big data technologies, resulting in new research directions of EC like distributed EC and surrogate-assisted EC. These advances have significantly improved the performance and the application scope of EC, but also trigger privacy leakages, such as the leakage of optimal results and surrogate model. Accordingly, evolutionary computation combined with privacy protection is becoming an emerging topic. However, privacy concerns in evolutionary computation lack a systematic exploration, especially for the object, motivation, position, and method of privacy protection. To this end, in this paper, we discuss three typical optimization paradigms (i.e., \textit{centralized optimization, distributed optimization, and data-driven optimization}) to characterize optimization modes of…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · IoT and Edge/Fog Computing · Metaheuristic Optimization Algorithms Research
