Feature Selection for Fault Detection and Prediction based on Event Log
Analysis
- URL: http://arxiv.org/abs/2208.09440v1
- Date: Fri, 19 Aug 2022 16:43:37 GMT
- Title: Feature Selection for Fault Detection and Prediction based on Event Log
Analysis
- Authors: Zhong Li and Matthijs van Leeuwen
- Abstract summary: Event logs are widely used for anomaly detection and prediction in complex systems.
We develop a feature selection method for log-based anomaly detection and prediction, largely improving the effectiveness and efficiency.
- Score: 14.80211278818555
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Event logs are widely used for anomaly detection and prediction in complex
systems. Existing log-based anomaly detection methods usually consist of four
main steps: log collection, log parsing, feature extraction, and anomaly
detection, wherein the feature extraction step extracts useful features for
anomaly detection by counting log events. For a complex system, such as a
lithography machine consisting of a large number of subsystems, its log may
contain thousands of different events, resulting in abounding extracted
features. However, when anomaly detection is performed at the subsystem level,
analyzing all features becomes expensive and unnecessary. To mitigate this
problem, we develop a feature selection method for log-based anomaly detection
and prediction, largely improving the effectiveness and efficiency.
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