Big data analysis and distributed deep learning for next-generation intrusion detection system optimization
Khloud Al Jallad, Mohamad Aljnidi, Mohammad Said Desouki

TL;DR
This paper introduces a distributed deep learning approach using LSTM networks on Apache Spark to improve intrusion detection by identifying normal, abnormal, and complex security threats with higher accuracy and lower false positives.
Contribution
It presents a novel integration of language processing, contextual analysis, and big data techniques for real-time anomaly detection in network traffic.
Findings
Higher detection rate than signature and traditional anomaly IDS
Lower false positive rate in anomaly detection
Effective detection of point, collective, and contextual anomalies
Abstract
With the growing use of information technology in all life domains, hacking has become more negatively effective than ever before. Also with developing technologies, attacks numbers are growing exponentially every few months and become more sophisticated so that traditional IDS becomes inefficient detecting them. This paper proposes a solution to detect not only new threats with higher detection rate and lower false positive than already used IDS, but also it could detect collective and contextual security attacks. We achieve those results by using Networking Chatbot, a deep recurrent neural network: Long Short Term Memory (LSTM) on top of Apache Spark Framework that has an input of flow traffic and traffic aggregation and the output is a language of two words, normal or abnormal. We propose merging the concepts of language processing, contextual analysis, distributed deep learning, big…
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