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A Privacy-Preserving Evolutionary Computation Framework for Feature Selection

Authors
Sun, BingLi, Jian-YuLiu, Xiao-FangYang, QiangZhan, Zhi-HuiZhang, Jun
Issue Date
Oct-2023
Publisher
Springer Verlag
Keywords
Data Science; Differential Evolution; Evolutionary Computation; Feature Selection; Particle Swarm Optimization; Privacy Preservation
Citation
Web Information Systems Engineering – WISE 2023 24th International Conference, Melbourne, VIC, Australia, October 25–27, 2023, Proceedings, v.14306 , pp 260 - 274
Pages
15
Indexed
SCOPUS
Journal Title
Web Information Systems Engineering – WISE 2023 24th International Conference, Melbourne, VIC, Australia, October 25–27, 2023, Proceedings
Volume
14306
Start Page
260
End Page
274
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/115667
DOI
10.1007/978-981-99-7254-8_20
ISSN
0302-9743
Abstract
Feature selection is a crucial process in data science that involves selecting the most effective subset of features. Evolutionary computation (EC) is one of the most commonly-used feature selection techniques and has demonstrated good performance, which can help find the suitable feature subset based on training data and fitness information. However, in real-world scenarios, the exact fitness information and privacy-protected data cannot be directly accessed due to privacy and security issues, which leads to a great optimization challenge. To solve such privacy-preserving feature selection problems efficiently, this paper proposes a novel EC-based feature selection framework that balances data privacy and optimization efficiency, together with three contributions. First, based on the rank-based cryptographic function that returns the rank of solutions rather than the exact fitness information, this paper proposes a new fitness function to guide the EC algorithm to approach the global optimum without knowing the exact fitness information and the dataset, thereby preserving data privacy. Second, by integrating the proposed method and EC algorithms, this paper develops a new differential evolution and particle swarm optimization algorithms for efficient feature selection. Finally, experiments are conducted on public datasets, which demonstrate that the proposed method can maintain feature selection efficiency while preserving data privacy. © 2023, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
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