An unsupervised anomaly detection framework for detecting anomalies in real time through network system’s log files analysis

Nowadays, in almost every computer system, log files are used to keep records of occurring events. Those log files are then used for analyzing and debugging system failures. Due to this important utility, researchers have worked on finding fast and efficient ways to detect anomalies in a computer sy...

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Bibliographic Details
Main Authors: Vannel Zeufack, Donghyun Kim, Daehee Seo, Ahyoung Lee
Format: Article
Language:English
Published: Elsevier 2021-12-01
Series:High-Confidence Computing
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2667295221000209
Description
Summary:Nowadays, in almost every computer system, log files are used to keep records of occurring events. Those log files are then used for analyzing and debugging system failures. Due to this important utility, researchers have worked on finding fast and efficient ways to detect anomalies in a computer system by analyzing its log records. Research in log-based anomaly detection can be divided into two main categories: batch log-based anomaly detection and streaming log- based anomaly detection. Batch log-based anomaly detection is computationally heavy and does not allow us to instantaneously detect anomalies. On the other hand, streaming anomaly detection allows for immediate alert. However, current streaming approaches are mainly supervised. In this work, we propose a fully unsupervised framework which can detect anomalies in real time. We test our framework on hdfs log files and successfully detect anomalies with an F-1 score of 83%.
ISSN:2667-2952