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Predicting attribute based user trustworthiness for access control of resources

机译:预测基于属性的用户信任度以进行资源访问控制

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The purpose of open, distributed systems, is to enable coordinated resource sharing to diverse users. In order to protect each participant's privilege and security, a secure and efficient access control is essential. Due to limited or lack of knowledge about user's identities in open systems, access control need to be specified in terms of the attributes and properties of the users. Moreover, the attribute based access control methods are known for their flexibility and dynamicity. This paper puts forward a novel attribute based trust model using Radial Basis Neural Network to define the access control. RBFNN is used because of its ability to generalize well even for unseen data and fast learning data. The trustworthiness of the requestors is computed using RBFNN, maintaining the continuity of access decisions. The framework is validated on the real data of EGEE grid, a distributed system and found to be performed better than feed forward neural network.
机译:开放,分布式系统的目的是使协调的资源共享给不同的用户。为了保护每个参与者的特权和安全,安全有效的访问控制至关重要。由于开放系统中有关用户身份的知识有限或缺乏知识,因此需要根据用户的属性和属性来指定访问控制。此外,基于属性的访问控制方法以其灵活性和动态性而闻名。提出了一种新的基于径向基神经网络的基于属性的信任模型来定义访问控制。之所以使用RBFNN,是因为它具有很好的泛化能力,即使对于看不见的数据和快速学习的数据也是如此。使用RBFNN计算请求者的可信度,从而保持访问决策的连续性。该框架在EGEE网格,分布式系统的真实数据上进行了验证,并且发现其性能优于前馈神经网络。

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