论文标题

TIDF-DLPM:术语和基于文档频率的数据泄漏预防模型

TIDF-DLPM: Term and Inverse Document Frequency based Data Leakage Prevention Model

论文作者

Gupta, Ishu, Mittal, Sloni, Tiwari, Ankit, Agarwal, Priya, Singh, Ashutosh Kumar

论文摘要

数据的机密性已被危害,因为它已被归类为虚假类别,这些类别可能被泄露给未经授权的一方。因此,各种组织主要是实施数据泄漏预防系统(DLP)。防火墙和入侵检测系统正在被过时的安全机制。在发送状态或休息中使用的数据正在由DLP监视。借助DLP的相邻上下文和内容,可以防止机密数据。在本文中,一种基于语义的方法用于根据统计数据泄漏预防模型对数据进行分类。为了检测涉及的私人数据,统计分析被用于在数据泄漏环境中贡献安全机制。偏爱的频率内文档频率(TF-IDF)是事实和详细信息恢复功能,以在特定主题下排列文档。结果表明,类似的统计DLP方法可以适当地对文档进行适当的分类,以防范围更改以及互换文档。

Confidentiality of the data is being endangered as it has been categorized into false categories which might get leaked to an unauthorized party. For this reason, various organizations are mainly implementing data leakage prevention systems (DLPs). Firewalls and intrusion detection systems are being outdated versions of security mechanisms. The data which are being used, in sending state or are rest are being monitored by DLPs. The confidential data is prevented with the help of neighboring contexts and contents of DLPs. In this paper, a semantic-based approach is used to classify data based on the statistical data leakage prevention model. To detect involved private data, statistical analysis is being used to contribute secure mechanisms in the environment of data leakage. The favored Frequency-Inverse Document Frequency (TF-IDF) is the facts and details recapture function to arrange documents under particular topics. The results showcase that a similar statistical DLP approach could appropriately classify documents in case of extent alteration as well as interchanged documents.

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