LogAnMeta: Log Anomaly Detection Using Meta Learning
- URL: http://arxiv.org/abs/2212.10992v1
- Date: Wed, 21 Dec 2022 13:00:02 GMT
- Title: LogAnMeta: Log Anomaly Detection Using Meta Learning
- Authors: Abhishek Sarkar, Tanmay Sen, Srimanta Kundu, Arijit Sarkar, Abdul
Wazed
- Abstract summary: Current supervised log anomaly detection frameworks tend to perform poorly on new types or signatures of anomalies with few or unseen samples in the training data.
We propose a meta-learning-based log anomaly detection framework (LogAnMeta) for detecting anomalies from sequence of log events with few samples.
- Score: 0.755972004983746
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modern telecom systems are monitored with performance and system logs from
multiple application layers and components. Detecting anomalous events from
these logs is key to identify security breaches, resource over-utilization,
critical/fatal errors, etc. Current supervised log anomaly detection frameworks
tend to perform poorly on new types or signatures of anomalies with few or
unseen samples in the training data. In this work, we propose a
meta-learning-based log anomaly detection framework (LogAnMeta) for detecting
anomalies from sequence of log events with few samples. LoganMeta train a
hybrid few-shot classifier in an episodic manner. The experimental results
demonstrate the efficacy of our proposed method
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