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An Adaptive Access Control Model Based on Trust and Risk for Medical Big Data

机译:基于信任和医疗大数据风险的自适应访问控制模型

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Although big data technology is widely used in the medical field, there is a risk of privacy leakage in the process of medical data share. In terms of this problem, firstly, this paper divides user access behavior into two stages: selecting work objects and selecting what kind of which information to visit; then uses information entropy to measure the confusion degree when users select objects in the process of access; and uses entropy as the input of BP neural network to quantify the risk of access behavior. The risk is fed back to the trust center, which calculates the value of user trust according to the principle that the value of user trust is negatively correlated with the risk. If the user trust value does not meet the requirements of the assigned role, the role will not be assigned. At the same time, if the risk quota is exhausted, the access will be blocked. In this way, access control of medical data is realized.
机译:虽然大数据技术广泛用于医疗领域,但医学数据共享过程中存在隐私泄漏的风险。在这个问题方面,首先,本文将用户访问行为划分为两个阶段:选择工作对象并选择要访问的哪种信息;然后,当用户在访问过程中选择对象时,使用信息熵测量混淆程度;并使用熵作为BP神经网络的输入来量化访问行为的风险。根据用户信任值与风险负相关的原则,将风险送回信任中心,该价值根据用户信任的价值与风险负相关。如果用户信任值不符合指定角色的要求,则不会分配角色。同时,如果风险配额耗尽,将阻止访问权限。以这种方式,实现了医疗数据的访问控制。

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