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Variational Encoder-Decoder Recurrent Neural Network (VED-RNN) for Anomaly Prediction in a Host Environment

机译:变分编码器 - 解码器复发性神经网络(VED-RNN)在主机环境中的异常预测

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Intrusion detection systems (IDS) are important security tools. NIDS monitors network's traffic and HIDS filters local one. HIDS are often based on anomaly detection. Several studies deal with anomaly detection using system-call traces. In this paper, we propose an anomaly detection and prediction approach. System-call traces, invoked by the running programs, are analyzed in real time. For prediction, we use a Sequence to sequence model based on variational encoder-decoder (VED) and variants of Recurrent Neural Networks (RNN), these architectures showed their performance on natural language processing. To make the analogy, we exploit the semantics behind the invoking order of system-calls that are then seen as sentences. A preprocessing phase is added to optimize the prediction model input data representation. A one-class classification is done to categorize the sequences into normal or abnormal. Tests are achieved on the ADFA-LD dataset and showed the advantage of the prediction for the intrusion detection/prediction task.
机译:入侵检测系统(IDS)是重要的安全工具。 NIDS监控网络的流量和HIDS过滤器本地。 HID通常基于异常检测。几项研究处理使用系统呼叫迹线的异常检测。在本文中,我们提出了一种异常检测和预测方法。由运行程序调用的系统呼叫跟踪实时分析。对于预测,我们采用基于变编码器,解码器的序列序列模型(VED)和递归神经网络(RNN)的变种,这些结构显示了他们对自然语言的处理性能。为了制作类比,我们利用系统调用顺序后面的语义,然后被视为句子。添加预处理阶段以优化预测模型输入数据表示。完成单级分类以将序列分类为正常或异常。在ADFA-LD数据集上实现测试,并显示了入侵检测/预测任务的预测的优点。

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