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AI and Machine Learning for Industrial Security With Level Discovery Method

机译:AI和机器学习工业安全与水平发现方法

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摘要

Protecting enterprise information security is a main task of Internet of Things system. The interaction between employees in same enterprise is based on level structures. So it is important to discover levels of employees for urban developers to protect enterprise information security. In this article, we propose a level discovery method for employees (LDME) from the records of employees using mobile phones named LDME. The call behavior between employees are expressed as several weighted directed complex networks, LDME represent edges in these weighted directed complex networks as vectors to exact both direction and weight information of the edges. Combined with supervised learning method, LDME prune these weighted directed networks into directed acyclic networks, which accurately reflect levels information between employees. At the same time, LDME mines the maximal frequent directed acyclic substructure from the above directed acyclic networks with efficient way, which indicate the stable levels information. We use real data to verify the performance of our method. The experimental result shows that the level of employees mined with our method is accurate and stable.
机译:保护企业信息安全是事物互联网系统的主要任务。同一企业员工之间的互动是基于级别结构。因此,可以发现城市开发商的员工水平是重要的,以保护企业信息安全。在本文中,我们向员工(LDME)提出了使用名为LDME的移动电话的员工记录的员工(LDME)的级别发现方法。员工之间的呼叫行为表示为若干加权定向复杂网络,LDME表示这些加权指向复杂网络中的边缘,作为向量的向量和边缘的精确两个方向和权重信息。结合监督学习方法,LDME将这些加权定向网络定为有关的非循环网络,该网络精确反映了员工之间的级别信息。同时,LDME利用上述有效的非线性网络具有高效方式的最大频繁定向的无循环子结构,其指示稳定的级别信息。我们使用真实数据来验证我们的方法的性能。实验结果表明,随着我们的方法开采的员工水平是准确的稳定性的。

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