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Federated learning of predictive models from federated Electronic Health Records

机译:从联合电子健康记录联合学习预测模型

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摘要

BackgroundIn an era of “big data,” computationally efficient and privacy-aware solutions for large-scale machine learning problems become crucial, especially in the healthcare domain, where large amounts of data are stored in different locations and owned by different entities. Past research has been focused on centralized algorithms, which assume the existence of a central data repository (database) which stores and can process the data from all participants. Such an architecture, however, can be impractical when data are not centrally located, it does not scale well to very large datasets, and introduces single-point of failure risks which could compromise the integrity and privacy of the data. Given scores of data widely spread across hospitals/individuals, a decentralized computationally scalable methodology is very much in need.
机译:背景技术在“大数据”时代,针对大规模机器学习问题的计算有效且具有隐私意识的解决方案变得至关重要,尤其是在医疗保健领域,在该领域,大量数据存储在不同的位置并由不同的实体拥有。过去的研究集中在集中式算法上,该算法假定存在一个中央数据库(数据库),该数据库可以存储和处理来自所有参与者的数据。但是,当数据不在中心位置时,这种架构可能不切实际,无法很好地扩展到非常大的数据集,并且会引入单点故障风险,这可能会损害数据的完整性和隐私性。鉴于数十个数据广泛分布在医院/个人之间,因此非常需要分散的可计算扩展的方法。

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