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BIDIRECTIONAL LSTM AUTOENCODER FOR SEQUENCE BASED ANOMALY DETECTION IN CYBER SECURITY

机译:双向LSTM自动编码器,用于网络安全中基于序列的异常检测

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Cyber-security is concerned with protecting information, a vital asset in today's world. The volume of data that is generated can be usefully analyzed when cyber-security systems are effectively implemented with the aid of software support. Our approach is to determine normal behavior of a system based on sequences of system call traces made by the kernel processes in the system. This paper describes a robust and computationally efficient anomaly based host based intrusion detection system using an Encoder-Decoder mechanism. Using CuDNNLSTM networks, it is possible to obtain a set of comparable results with reduced training times. The Bidirectional Encoder and a unidirectional Decoder is trained on normal call sequences in the ADFA-LD dataset. Intrusion Detection is evaluated based on determining the probability of a sequence being reconstructed by the model representing normal data. The sequences with a low probability value are classified as an anomaly.
机译:网络安全与保护信息有关,信息是当今世界的重要资产。当借助软件支持有效实施网络安全系统时,可以有效地分析生成的数据量。我们的方法是根据系统中内核进程做出的系统调用跟踪序列来确定系统的正常行为。本文介绍了一种使用Encoder-Decoder机制的强大且计算效率高的基于异常的基于主机的入侵检测系统。使用CuDNNLSTM网络,可以在减少培训时间的情况下获得一组可比较的结果。双向编码器和单向解码器在ADFA-LD数据集中的常规调用序列上进行训练。基于确定表示正常数据的模型重构序列的概率,来评估入侵检测。具有低概率值的序列被分类为异常。

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