使用可视化和机器学习的异常检测

F. Mizoguchi
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引用次数: 14

摘要

在过去几年中,来自组织内部或外部的未经授权的访问已成为一个社会问题,因此需要能够检测此类访问的系统。因此,我们使用归纳逻辑编程(ILP)监测正常活动,这是机器学习和检测异常之一。为确保有效监测,我们认为必须考虑以下两点。一方面是ILP系统的自动化检测,它是一个规则生成引擎,总是归纳和更新有效的规则。另一点是提供一个可视化工具,将诱导规则反映到检测系统中。该工具使管理员能够了解检测情况。为了实现自动检测,我们为ILP系统提供了自动参数调整功能。对于可视化工具,我们采用了双曲树的可视化技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection using visualization and machine learning
Unauthorized access from inside or outside an organization has become a social problem in the last few years, making a system that can detect such accesses desirable. We therefore monitor normal activities using inductive logic programming (ILP) which is one of machine learning and detect anomalies. To ensure effective monitoring, we think the following two points must be considered. One point is automation of detection by ILP system, which is a rule generation engine, that always induces and updates effective rules. The other point is providing a visualization tool that reflects induced rules to the detection system. This tool enables an administrator to understand detection situations. For automated detection, we provide the ILP system with an automatic parameter adjustment function. For the visualization tool, we apply the visualization technology of a hyperbolic tree.
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