计算机科学
入侵检测系统
人工神经网络
人工智能
异常检测
机器学习
特征提取
特征(语言学)
寄主(生物学)
数据挖掘
生态学
语言学
生物
哲学
作者
Yisroel Mirsky,Tomer Doitshman,Yuval Elovici,Asaf Shabtai
标识
DOI:10.14722/ndss.2018.23204
摘要
Neural networks have become an increasingly popular solution for network intrusion detection systems (NIDS).Their capability of learning complex patterns and behaviors make them a suitable solution for differentiating between normal traffic and network attacks.However, a drawback of neural networks is the amount of resources needed to train them.Many network gateways and routers devices, which could potentially host an NIDS, simply do not have the memory or processing power to train and sometimes even execute such models.More importantly, the existing neural network solutions are trained in a supervised manner.Meaning that an expert must label the network traffic and update the model manually from time to time.In this paper, we present Kitsune: a plug and play NIDS which can learn to detect attacks on the local network, without supervision, and in an efficient online manner.Kitsune's core algorithm (KitNET) uses an ensemble of neural networks called autoencoders to collectively differentiate between normal and abnormal traffic patterns.KitNET is supported by a feature extraction framework which efficiently tracks the patterns of every network channel.Our evaluations show that Kitsune can detect various attacks with a performance comparable to offline anomaly detectors, even on a Raspberry PI.This demonstrates that Kitsune can be a practical and economic NIDS.
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