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Pairing of most relevant variables and bootstrap samples with ridge regression for data sharing

机译:将最相关的变量和引导程序样本与岭回归配对以进行数据共享

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A parameterized ridge regression-based perturbation model is proposed in this paper to address data privacy and data utility in cyber-physical systems. In this approach, most relevant confidential variables are extracted along with their bootstrap samples to attain high confidentiality protection and data classification accuracies. The multiple devices and their connectedness in cyber-physical systems can help the pairing of the most relevant confidential variables and their corresponding bootstrap samples efficiently. The out-of-bag error and signal-interference-ratio are used as measures to study the performance of the proposed model. The experimental analysis shows the existence of ridge regression parameters that can help perturb data to achieve high confidentiality and classification as data utility. This study motivates a further research with these models.
机译:本文提出了一种基于参数化岭回归的摄动模型,以解决网络物理系统中的数据隐私和数据实用性问题。在这种方法中,最相关的机密变量及其引导程序样本将被提取,以实现高度机密性保护和数据分类准确性。网络物理系统中的多种设备及其相互连接可以帮助最相关的机密变量及其相应的引导程序样本配对。袋外误差和信号干扰比被用作研究所提出模型性能的措施。实验分析表明,存在岭回归参数,这些参数可以帮助扰动数据以实现高度机密性和作为数据实用程序的分类。这项研究激发了对这些模型的进一步研究。

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