在联邦环境中为数据分析授权可信数据共享:基于区块链的方法

P. Plebani, David Rossetto, F. Tiezzi
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引用次数: 0

摘要

随着数据分析在商业中用于增加利润,组织使用它来实现他们的目标。即使企业数据本身可能已经很有价值,在许多情况下,将其与外部数据源结合起来将提高输出的价值,从而使数据分析需要数据共享。与此同时,组织不愿意共享数据,因为他们害怕泄露关键信息。这需要能够通过规范数据共享方式来保护数据持有者的解决方案,以确保所谓的数据主权。本文关注的是数据湖作为一种成熟的跨企业数据分析技术的使用,其中考虑了内部或公开可用的数据。目标是扩展数据湖的功能,在尊重数据主权的情况下,使数据湖也能够与其他组织共享的数据一起被摄取,并与外部组织共享数据。值得注意的是,这项工作的目的是通过定义一个体系结构来面对这个问题,该体系结构插入到联邦环境中:限制数据访问并允许监视数据的实际使用是否尊重相关各方商定的策略中表达的数据主权;利用区块链技术作为保证数据共享可追溯性的手段;并且允许平衡计算移动和数据移动。所建议的方法已应用于一个医疗保健场景,在该场景中,多个机构(例如医院和诊所、研究机构和医科大学)在本地数据湖中生成和收集临床数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering trusted data sharing for data analytics in a federated environment: A blockchain-based approach
As data analytics is used in business to increase profits, organizations use it to pursue their goals. Even if enterprise data could be already valuable on its own, in many cases, combining it with external data sources would boost the value of the output, making data sharing a need in data analytics. At the same time, organizations are reluctant to share data, as they are scared of disclosing critical information. This calls for solutions that are able to safeguard data holders by regulating how data can be shared to ensure the so-called data sovereignty. This paper focuses on the usage of data lakes as well-established technology across enterprises for data analytics where internal or publicly available data are considered. The goal is to extend data lakes with functionalities that, respecting the data sovereignty, enable a data lake also to be ingested with data shared by other organizations and to share data to external organizations. Notable, the purpose of this work is to face this issue by defining an architecture that, inserted in a federated environment: restricts data access and enables monitoring that the actual usage of data respects the data sovereignty expressed in the policies agreed upon by the involved parties; makes use of Blockchain technology as a means for guaranteeing the traceability of data sharing; and allows for balancing computation movement and data movement. The proposed approach has been applied to a healthcare scenario where several institutions (e.g., hospitals and clinics, research institutes, and medical universities) produce and collect clinical data in local data lakes.
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