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Organizations Data Integrity Providing through Employee Behavioral Analysis Algorithms

机译:通过员工行为分析算法提供的组织数据完整性

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This article discusses the development of mathematical support and software for detecting anomalous behavior of users based on biometric characteristics of their behavior analysis. One of the challenges in intelligent UBA (User Behavior Analytics) systems is acquisition of useful information from a large volumes of unstructured, unmatched data. Methods and algorithms of intelligent data processing and machine learning used in UBA/DSS systems help to work on a task of solving problems of data analysis of different directivities. It is proposed an application of machine learning methods in implementation of mobile UBA system. There was formed the list of the most significant factors submitted to the input of the analyzing methods during the study. Two approaches of detecting abnormal user behavior have been proposed. The application of machine learning techniques in intelligent UBA systems will make it possible to predict information risks and insider excfiltration of these organizations in advance.
机译:本文讨论了基于用户行为分析的生物特征来检测用户异常行为的数学支持和软件的开发。智能UBA(用户行为分析)系统的挑战之一是从大量非结构化,不匹配的数据中获取有用的信息。 UBA / DSS系统中使用的智能数据处理和机器学习方法和算法有助于完成解决不同方向的数据分析问题的任务。提出了一种机器学习方法在移动UBA系统实现中的应用。在研究期间,形成了提交给分析方法输入的最重要因素的列表。已经提出了两种检测用户异常行为的方法。机器学习技术在智能UBA系统中的应用将使预先预测这些组织的信息风险和内部人员渗透成为可能。

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