监控泄露的机密数据

S. Trabelsi
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引用次数: 1

摘要

2018年上半年,全球超过945起数据泄露事件导致45亿条数据记录遭到泄露。数据泄露是针对工业和政府部门的最大安全问题之一。数据丢失大出血是非常重要和不可控的,公司和机构需要非常迅速地做出反应,以降低被攻击者利用泄露数据的风险。不幸的是,目前情况并非如此,因为一家公司平均需要花费196天来识别数据泄露,并额外花费69天来控制它。为了减少识别时间,我们提出了一种实时监控黑客源上发布的大量泄露数据流的解决方案。这些数据是保密的,机密信息是精确识别的。这种分类是通过推理规则和卷积神经网络预训练模型的组合来实现的,该模型可以识别机密数据的不同模式。我们还描述了我们在公司监控用例上下文中收集和识别的数据的观察结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring Leaked Confidential Data
During the first half of 2018 over than 945 data breaches resulted in 4.5 Billion data records been compromised worldwide. Data leak is one of the biggest security issues targeting the industrial and governmental sectors. The data loss hemorrhage is too important and uncontrollable that companies and institutions need to react very quickly to reduce the risk of being targeted by an attack exploiting leaked data. Unfortunately, this in not yet the case, because on average a company spend 196 days to identify a data breach and 69 additional days to contain it. In order to reduce the identifications time, we propose a solution to monitor, in real time, huge streams of leaked data published on hacking sources. These ese data are classified, and confidential information is precisely identified. This classification is per-formed by the combination of inference rules and a Convolutional Neural Network pre-trained model, which recognizes different patterns of confidential data. We also describe our observations from the data that we collected and identified in the context of a company monitoring use case.
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