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RNN-based Prediction for Network Intrusion Detection

Shin Hyuk Park, Hyunjae Park, Young‐June Choi

202044 citationsDOI

Abstract

We investigate a prediction model using RNN for network intrusion detection in industrial IoT environments. For intrusion detection, we use anomaly detection methods that estimate the next packet, measure and score the distance measurement in real packets to distinguish whether it is a normal packet or an abnormal packet. When the packet was learned in the LSTM model, two-gram and sliding window of N-gram showed the best performance in terms of errors and the performance of the LSTM model was the highest compared with other data mining regression techniques. Finally, cosine similarity was used as a scoring function, and anomaly detection was performed by setting a boundary for cosine similarity that consider as normal packet.

Topics & Concepts

Network packetCosine similarityComputer scienceIntrusion detection systemAnomaly detectionSliding window protocolArtificial intelligenceAnomaly (physics)Data miningSimilarity (geometry)Pattern recognition (psychology)Window (computing)Computer networkOperating systemImage (mathematics)PhysicsCondensed matter physicsNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingNetwork Packet Processing and Optimization
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