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Multiple-negative survey method for enhancing the accuracy of negative survey-based cloud data privacy: Applications and extensions

机译:用于提高基于负调查的云数据隐私准确性的多负调查方法:应用程序和扩展

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摘要

Cloud computing brings convenience to people's lives because of its high efficiency, usability, accessibility and affordability. But the privacy of cloud data faces severe challenges. Although negative survey, which is inspired by Artificial Immune System (AIS), can protect users' privacy data with high efficiency and degree of privacy protection, its accuracy is influenced by the number of client terminals, and insufficient client terminals may lead to large errors. This study focuses on a multiple-negative survey method of remedying this weakness. Compared with the traditional negative survey method, the multiple-negative survey method collects each user's multiple different negative categories rather than only one negative category. Two key scientific problems (accuracy and confidence level) are analyzed, and an application (anonymity vote model) is then proposed based on the multiple-negative survey method.
机译:云计算的高效性,可用性,可访问性和可负担性为人们的生活带来便利。但是云数据的隐私面临严峻挑战。尽管基于人工免疫系统(AIS)进行的负面调查可以高效,高度地保护用户的隐私数据,但是其准确性受客户端数量的影响,而客户端数量不足可能会导致较大的错误。这项研究的重点是纠正这种弱点的多阴性调查方法。与传统的否定调查方法相比,多重否定调查方法收集每个用户的多个不同的否定类别,而不是仅收集一个否定类别。分析了两个关键的科学问题(准确性和置信度),然后基于多阴性调查方法提出了一个应用程序(匿名投票模型)。

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