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Cost-Sensitive Access Control for Illegitimate Confidential Access by Insiders

机译:内部人员非法机密访问的成本敏感型访问控制

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摘要

In many organizations, it is common to control access to confidential information based on the need-to-know principle; The requests for access are authorized only if the content of the requested information is relevant to the requester's current information analysis project. We formulate such content-based authorization, i.e. whether to accept or reject access requests as a binary classification problem. In contrast to the conventional error-minimizing classification, we handle this problem in a cost-sensitive learning framework in which the cost caused by incorrect decision is different according to the relative importance of the requested information. In particular, the cost (i.e., damaging effect) for a false positive (i.e., accepting an illegitimate request) is more expensive than that of false negative (i.e., rejecting a valid request). The former is a serious security problem because confidential information, which should not be revealed, can be accessed. From the comparison of the cost-sensitive classifiers with error-minimizing classifiers, we found that the costing with a logistic regression showed the best performance, in terms of the smallest cost paid, the lowest false positive rate, and the relatively low false negative rate.
机译:在许多组织中,通常根据需要了解的原则来控制对机密信息的访问。仅当所请求信息的内容与请求者的当前信息分析项目相关时,才可以授权访问请求。我们制定了这种基于内容的授权,即是接受还是拒绝访问请求作为二进制分类问题。与传统的最小化错误分类相反,我们在成本敏感型学习框架中处理此问题,在该框架中,根据所需信息的相对重要性,由错误决策导致的成本有所不同。尤其是,误报(即接受非法请求)的成本(即破坏效果)比误报(即拒绝有效请求)的成本更高。前者是一个严重的安全问题,因为可以访问不应泄露的机密信息。通过比较成本敏感型分类器和错误最小化分类器,我们发现,采用逻辑回归的成本计算显示出最佳性能,这是所支付的最小成本,最低的误报率和相对较低的误报率。 。

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