JSAI2020

Presentation information

Interactive Session

[3Rin4] Interactive 1

Thu. Jun 11, 2020 1:40 PM - 3:20 PM Room R01 (jsai2020online-2-33)

[3Rin4-50] Real-time anomaly detection system for large volume network traffic

〇Shuhei Asano1, Yu Oya1, Shubham Saha1, Aakash Nand1, Abhik Datta banik1 (1.NTT communications Corporation)

Keywords:Anomaly Detection, Distributed processing, Internet traffic

In recent years, due to the growing complexity of cyberattacks such as DDoS, the detection of network anomalies using conventional rules like threshold-detection is becoming increasingly difficult to accomplish. Therefore, a machine learning based novel network anomaly detection methodology with enhanced accuracy has been proposed. Furthermore, Internet traffic is increasing year by year due to the rapid penetration of IoT devices into every facet of society. Consequently, the use of a model involving massive computations for a huge data stream poses the problem of diminished real-time accuracy. In this study, we investigate a high-accuracy real-time anomaly detection system by combining the strengths of distributed infrastructure and deep learning for enhanced real-time efficiency. Specifically, by using Spark Streaming which is a distributed processing framework, and distributing the processing load to the trained machine learning model, real-time anomaly detection has been performed for traffic flowing on the Internet.

Authentication for paper PDF access

A password is required to view paper PDFs. If you are a registered participant, please log on the site from Participant Log In.
You could view the PDF with entering the PDF viewing password bellow.

Password