大数据时代的数据所有权分析

Wei Xiao, Yaqing Tu, Ping Wan, Ming Li, J. Ma
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摘要

为了解决大数据时代的数据所有权问题,本文提出了一种基于数据分类的数据所有权建立方法。通过总结大数据的特点,分析当前关于数据所有权的主要观点,遵循保护数据机密和承认最大贡献者的原则。首先,根据数据生成过程中参与者参与程度的不同,将数据分为参与性数据和非参与性数据两类。根据参与人贡献的不同,将参与式数据细分为平等参与式数据和非平等参与式数据。由于非参与性数据通常涉及被记录方的私人和机密信息,因此建议将这类数据的所有权归被记录方所有。本文遵循承认最大贡献者的原则,提出平等参与数据的所有权属于所有参与者,非平等参与数据的所有权属于积极参与者。
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Analysis of Data Ownership Rights in the Big Data Era
For working out the problem of ownership rights of data in the Big Data era, this paper proposes an establishment method of data ownership rights based on data classification. By summarizing characteristics of big data and analyzing current main views of the data ownership rights, this proposed method is following the principles of protecting data confidentiality and acknowledging the greatest contributors. First, according to the different involvement degree of participants in data generation processes, the data is divided into two categories: participatory data and non-participatory data. The participatory data is subdivided into equal participatory data and non-equal participatory data based on different contributions of participants. Since the non-participatory data generally involves the private and confidential information of the recorded parties, it is proposed that the ownership rights of this kind of data should belong to the recorded parties. Following the principle of acknowledging the greatest contributors, this paper proposes that the ownership rights of the equal participatory data belongs to all participants and that of non-equal participatory data belongs to the active participants.
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