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Efficient Privacy-Preserving Logistic Regression with Iteratively Re-weighted Least Squares

机译:迭代权重最小二乘的有效保护隐私的Logistic回归

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In this paper, we propose a new secure protocols for privacy-preserving logistic regression of two vertically partitioned datasets. Our protocol is efficient in the sense that coefficients of logistic model are converged in few iterations by using the Iteratively Re-weighted Least Squares (IRLS). In the comparison to one of the existing work using the stochastic gradient descent (SGD), our protocol improved the performance of estimate from 30,000 to 7 iterations. We study the feasibility of the proposed protocol over the the Diagnosis Procedure Combination (DPC) database, a large-scale claim-based database of Japanese hospitals that contains confidential status of patients. Our scheme allows to estimate the probability of death with some patient information without revealing confidential data to the other party. Using the toy dataset and the trial implementation of the proposed scheme, we examine the accuracy of the proposed scheme and study the feasibility.
机译:在本文中,我们提出了一种新的安全协议,用于对两个垂直分区的数据集进行隐私保护的逻辑回归。通过使用迭代重新加权最小二乘(IRLS),逻辑模型的系数在几次迭代中收敛,就此而言,我们的协议是有效的。与使用随机梯度下降(SGD)的现有工作进行比较,我们的协议将估计性能从30,000次迭代提高到7次迭代。我们在诊断程序组合(DPC)数据库(日本医院的大型基于索赔的数据库,其中包含患者的机密状态)上研究提出的协议的可行性。我们的计划允许使用某些患者信息来估计死亡的可能性,而无需向另一方透露机密数据。利用玩具数据集和拟议方案的试行实施,我们检验了拟议方案的准确性并研究了可行性。

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