论文标题
有效的隐私保护水平分布数据的逻辑回归
Efficient Privacy Preserving Logistic Regression for Horizontally Distributed Data
论文作者
论文摘要
物联网设备正在迅速扩展并产生大量数据。越来越需要探索从这些设备收集的数据。协作学习为物联网设置提供了战略解决方案,但也引起了公众对数据隐私的关注。近年来,根据安全的多方计算和差异隐私开发了大量隐私技术。协作学习的主要挑战是平衡披露风险和数据实用程序,同时保持高计算效率。在本文中,我们提出了使用矩阵加密方法保存逻辑回归模型的隐私。安全方案对所选的明文攻击,已知的明文攻击以及可能损害协作学习中任何机构的合谋攻击具有弹性。加密的模型估计值被解密以提供真正的模型结果,没有准确性降解。实施验证阶段以检查机构之间的不诚实行为。实验评估表明,提出的方案的快速收敛速率和高效率。
Internet of Things devices are expanding rapidly and generating huge amount of data. There is an increasing need to explore data collected from these devices. Collaborative learning provides a strategic solution for the Internet of Things settings but also raises public concern over data privacy. In recent years, large amount of privacy preserving techniques have been developed based on secure multi-party computation and differential privacy. A major challenge of collaborative learning is to balance disclosure risk and data utility while maintaining high computation efficiency. In this paper, we proposed privacy preserving logistic regression model using matrix encryption approach. The secure scheme is resilient to chosen plaintext attack, known plaintext attack, and collusion attack that could compromise any agencies in the collaborative learning. Encrypted model estimate is decrypted to provide true model results with no accuracy degradation. Verification phase is implemented to examine dishonest behavior among agencies. Experimental evaluations demonstrate fast convergence rate and high efficiency of proposed scheme.