M-score:通过分配可用性权重来估计数据泄露事件的潜在危害

Amir Harel, A. Shabtai, L. Rokach, Y. Elovici
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引用次数: 32

摘要

在过去的几年中,数据泄露和数据滥用已经成为组织关注的主要问题。数据泄露或数据滥用事件可能会损害组织的声誉和品牌,并危及其客户的隐私。为了找到解决这些威胁的办法,已经进行了大量的研究。大多数方法都基于异常检测,通过检查SQL查询的语法来跟踪用户的行为,以便检测异常查询。其他方法检查查询检索到的数据。本文提出了一个分析检索数据的新概念——可用性权重。这种方法侧重于分配一个分数,该分数表示暴露给用户的数据的敏感程度。该措施预测用户以恶意方式利用暴露数据的能力。我们提出了一个新的度量,M-score,它为数据表分配了一个可用性权重,提出了新度量的一些属性,并通过几个泄漏场景展示了它的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
M-score: estimating the potential damage of data leakage incident by assigning misuseability weight
Over the past few years data leakage and data misuse have become a major concern for organizations. A data leakage or data misuse incident can damage an organization's reputation and brand name as well as compromise the privacy of its customers. Much research has been conducted in order to find a solution to these threats. Most methods are based on anomaly detection that tracks the user's behavior by examining the syntax of SQL queries in order to detect outlier queries. Other methods examine the data retrieved by the query. In this paper, we propose a new concept for analyzing the retrieved data - the Misuseability Weight. This approach focuses on assigning a score that represents the sensitivity level of the data exposed to the user. This measure predicts the ability of a user to exploit the exposed data in a malicious way. We suggest a new measure, the M-score, which assigns a misuseability weight to a table of data, propose some properties of the new measure and demonstrate its usefulness using over several leakage scenarios.
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