PriMaχ:一种用于改善区块链隐私保护的新型遗传强化学习模型

PriMa$\chi$: Novel Genetic Reinforcement Learning Model for Improving Privacy Preservation in Blockchain

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2026
被引 0
ABS 3

中文导读

提出PriMaχ混合框架,结合遗传算法和强化学习优化差分隐私中的隐私-效用权衡,并集成隐私感知智能合约实现链上隐私执行与零知识证明验证,适用于去中心化分析场景。

Abstract

As privacy concerns intensify in data-driven systems, this article presentsPriMa$\chi $, a hybrid framework that combines a genetic algorithm (GA) and reinforcement learning (RL) to optimize the privacy–utility tradeoff in differential privacy (DP) through explicit adaptive privacy–utility control. PriMa$\chi $adaptively selects perturbation configurations to minimize the privacy budget$(\varepsilon)$while preserving data utility$({\mathcal {U}})$. To support verifiable privacy-preserving analytics in decentralized environments, we further integrate PriMa$\chi $with a privacy-aware smart-contract framework that enables on-chain DP enforcement and zero-knowledge proof (ZKP) verification. The framework supports structured, transactional, and spatiotemporal workloads, including decentralized finance, electronic health records, census analytics, and location services. An interleaved Petri net model is used to formally verify privacy-aware state transitions in the smart-contract workflow. Experimental results show that PriMa$\chi $achieves utility of at least 80% under dataset-dependent privacy budgets in the range$0.003 \leq \varepsilon~\leq\unicode{0x0142}.43$, while also effectively mitigating model-extraction, membership-inference, and privacy-budget-exhaustion attacks. These results demonstrate that PriMa$\chi $provides adaptive, auditable, and practically deployable privacy protection for decentralized analytics.

区块链隐私保护强化学习差分隐私智能合约