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Intrusion Detection in Computer Systems by using Artificial Neural Networks with Deep Learning Approaches

机译:通过使用深度学习方法的人工神经网络在计算机系统中入侵检测

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摘要

Intrusion detection into computer networks has become one of the most important issues in cybersecurity. Attackers keep on researching and coding to discover new vulnerabilities to penetrate information security system. In consequence computer systems must be daily upgraded using up-to-date techniques to keep hackers at bay. This paper focuses on the design and implementation of an intrusion detection system based on Deep Learning architectures. As a first step, a shallow network is trained with labelled log-in [into a computer network] data taken from the Dataset CICIDS2017. The internal behaviour of this network is carefully tracked and tuned by using plotting and exploring codes until it reaches a functional peak in intrusion prediction accuracy. As a second step, an autoencoder, trained with big unlabelled data, is used as a middle processor which feeds compressed information and abstract representation to the original shallow network. It is proven that the resultant deep architecture has a better performance than any version of the shallow network alone. The resultant functional code scripts, written in MATLAB, represent a re-trainable system which has been proved using real data, producing good precision and fast response.
机译:入侵检测计算机网络已成为网络安全中最重要的问题之一。攻击者继续研究和编码以发现渗透信息安全系统的新漏洞。在后果中,必须使用最新的技术进行每日升级,以便在海湾保持黑客。本文侧重于基于深度学习架构的入侵检测系统的设计和实现。作为第一步,浅网络培训,用标记的登录[进入计算机网络]从数据集CicIDS2017获取的数据进行培训。通过使用绘图和探索代码仔细跟踪和调整该网络的内部行为,直到它达到入侵预测精度的功能峰值。作为第二步,用大未标记数据训练的AutoEncoder用作中间处理器,其将压缩信息和抽象表示的中间处理器用于原始浅网络。据证明,由此产生的深度架构具有比任何版本的浅网络的性能更好。在MATLAB中编写的结果函数代码脚本代表了一种可重新培训的系统,其使用真实数据已被证明,产生良好的精度和快速响应。

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