Advancing financial privacy: A novel integrative approach for privacy-preserving optimal portfolio
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초록

We propose a new privacy-preserving mean–variance optimization model, merging Multi-Party Computation (MPC) with Homomorphic Encryption (HE) through an innovative method. Empirical tests show our model outperforms existing approaches in privacy optimization, overcoming limitations regarding complex constraints. We highlight three findings: our model (i) outperforms others in privacy-preserving utility maximization with no-short-selling constraint; (ii) remains effective under complex box constraints, whereas the existing model entirely collapses; and (iii) achieves close alignment with the optimal portfolio from an economic perspective, providing high computational efficiency. It proves to be an effective solution for privacy optimization, a key aspect in mitigating ESG risks. © 2025 Elsevier B.V.

키워드

Homomorphic EncryptionMean-variance portfolioMulti-Party ComputationPortfolio optimizationPrivacy-preservingRobo-advisor
제목
Advancing financial privacy: A novel integrative approach for privacy-preserving optimal portfolio
저자
Ko, HyungjinLee, JaewookByun, Junyoung
DOI
10.1016/j.future.2025.107901
발행일
2026-01
유형
Article
저널명
Future Generation Computer Systems
174