Deep neural networks for sequence based anomaly detection in cyber security
Abstract
Cyber security has become one of the most challenging
aspects of modern world digital technology and it has
become imperative to minimize and possibly avoid the
impact of cybercrimes. Host based intrusion detection
systems help to protect systems from various kinds of
malicious cyber attacks. One approach is to determine
normal behaviour of a system based on sequences of
system calls made by processes in the system. The
proposed model describes a computationally efficient
anomaly based intrusion detection system based on
Recurrent Neural Networks. Using Gated Recurrent
Units rather than the normal LSTM networks it is
possible to obtain a set of comparable results with
reduced training times. The incorporation of stacked
CNNs with GRUs leads to improved anomaly IDS.
Intrusion Detection is based on determining the
probability of a particular call sequence occurring from a
language model trained on normal call sequences from
the ADFA Data set of system call traces. Sequences with
a low probability of occurring are classified as an anomaly
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