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Secure computation with horizontally partitioned data using adaptive regression splines

机译:使用自适应回归样条曲线对水平划分的数据进行安全计算

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摘要

When several data owners possess data on different records but the same variables, known as horizontally partitioned data, the owners can improve statistical inferences by sharing their data with each other. Often, however, the owners are unwilling or unable to share because the data are confidential or proprietary. Secure computation protocols enable the owners to compute parameter estimates for some statistical models, including linear regressions, without sharing individual records’ data. A drawback to these techniques is that the model must be specified in advance of initiating the protocol, and the usual exploratory strategies for determining good-fitting models have limited usefulness since the individual records are not shared. In this paper, we present a protocol for secure adaptive regression splines that allows for flexible, semi-automatic regression modeling. This reduces the risk of model mis-specification inherent in secure computation settings. We illustrate the protocol with air pollution data.
机译:当几个数据所有者拥有不同记录上的数据但具有相同变量(称为水平分区数据)时,所有者可以通过彼此共享数据来改善统计推断。但是,由于数据是机密或专有的,所有者通常不愿或无法共享。安全的计算协议使所有者能够在不共享单个记录数据的情况下为某些统计模型(包括线性回归)计算参数估计。这些技术的缺点是必须在启动协议之前指定模型,并且由于不共享各个记录,因此用于确定良好拟合模型的常规探索性策略的用处有限。在本文中,我们提出了一种用于安全自适应回归样条的协议,该协议允许进行灵活的半自动回归建模。这降低了安全计算设置中固有的模型错误指定的风险。我们用空气污染数据说明该协议。

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