Generating and Evaluating Synthetic UK Primary Care Data: Preserving Data Utility & Patient Privacy

Zhenchen Wang, P. Myles, A. Tucker
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引用次数: 25

Abstract

There is increasing interest in the potential of synthetic data to validate and benchmark machine learning algorithms as well as reveal any biases in real-world data used for algorithm development. This paper discusses the key requirements of synthetic data for such purposes and proposes an approach to generating and evaluating synthetic data that meets these requirements. We propose a framework to generate and evaluate synthetic data with the aim of simultaneously preserving the complexities of ground truth data in the synthetic data whilst also ensuring privacy. We include as a case study, a proof-of-concept synthetic dataset modelled on UK primary care data to demonstrate the application of this framework.
生成和评估综合英国初级保健数据:保护数据效用和患者隐私
人们越来越关注合成数据的潜力,以验证和基准机器学习算法,以及揭示用于算法开发的现实世界数据中的任何偏差。本文讨论了用于此类目的的合成数据的关键要求,并提出了一种生成和评估满足这些要求的合成数据的方法。我们提出了一个框架来生成和评估合成数据,目的是同时保留合成数据中地面真实数据的复杂性,同时确保隐私。作为一个案例研究,我们包括了一个概念验证合成数据集,以英国初级保健数据为模型,以展示该框架的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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