Distributed Network Behaviour Prediction Using Machine Learning and Agent-Based Micro Simulation

O. Makinde, A. Sangodoyin, Bashir Mohammed, D. Neagu, Umaru Adamu
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引用次数: 2

Abstract

Distributed network behaviour is increasingly attracting huge attention both in academics and industrial initiatives, and most recently machine learning has been used in every possible field, leveraging its advantages.Typically, a distributed networking allows for the execution of distributed applications which results in complex behaviours among connected systems. This complexity in itself can create grey areas and vulnerabilities in the securities of these networks, therefore predicting the behaviour of these systems both at the macro and micro level has become essential. In the past most researchers have predicted network behaviour and network attack patterns by using aggregated data, but in this paper we focus on the application of machine learning at the individual user level such that the prediction of the individual network user behaviour pattern at the micro level becomes a substasive tool in creating a realistic agent based simulation of the whole distributed network, which in turn can serve as a test bed for predicting what-if scenarios such as network attacks on the target system or exposing vulnerabilities within the target system. The simulation result was validated by comparing the simulated interaction within the simulated network to the data logged in the server logs within the real life network system. This produced a correlation above 0.8, indicating a realistic model.
基于机器学习和agent的分布式网络行为预测
分布式网络行为在学术界和工业界都越来越受到关注,最近机器学习利用其优势被应用于每个可能的领域。通常,分布式网络允许执行分布式应用程序,从而在连接的系统之间产生复杂的行为。这种复杂性本身就会在这些网络的安全性中产生灰色地带和漏洞,因此在宏观和微观层面预测这些系统的行为变得至关重要。在过去,大多数研究人员通过使用聚合数据来预测网络行为和网络攻击模式,但在本文中,我们将重点放在机器学习在个人用户层面的应用上,这样,在微观层面上对个人网络用户行为模式的预测就成为了创建基于智能体的真实的整个分布式网络模拟的实质性工具。这反过来又可以作为一个测试平台,用于预测诸如对目标系统的网络攻击或在目标系统中暴露漏洞之类的假设场景。通过将模拟网络中的模拟交互与实际网络系统中服务器日志中记录的数据进行比较,验证了仿真结果。这产生了高于0.8的相关性,表明这是一个现实的模型。
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