关于数据重要性分析

S. Kiyomoto, Yutaka Miyake
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引用次数: 1

摘要

信息泄露事故和恶意员工的内部威胁是企业IT系统面临的主要问题。数据重要性分析方法可以解决这一问题,该方法自动分析数据的重要性,并根据数据的重要性级别确定操作是否符合安全策略。内部线程还通过分析数据重要性和数据流得到保护。通过自动分析确定数据重要性的机制有助于避免人为错误。该机制根据数据重要性、高度机密、重要和非分类为用户发送的数据找到适当的类别。本文提出了一种分析方法,并对其应用进行了讨论。它将适用于人为错误和内部线程造成的信息泄露。该方法是数据诊断和数据分类相结合的方法,可以分析发送数据的事务是否符合安全策略。
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On Data Importance Analysis
Accidents of information leakage and insider threats by malicious employee are major issues in enterprise IT system. Data importance analysis methods can resolve this issue, the importance of data is automatically analyzed by the method and confirms whether the operation suits the security policy for the level of importance of the data. Insider threads are also protected by analyzing data importance and data flows. A mechanism to ascertain data importance via automatic analysis is useful for avoiding human error. The mechanism finds the appropriate category for user sent data in terms of data importance, highly secret, important, and unclassified. In this paper, we presented an analysis method and discussed its application. It will apply to information leakage by both human error and insider threads. The method is a combination of data diagnosis and data categorization, and it can analyze whether the transaction to send the data compiles with the security policy.
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