2024
DOI: 10.1007/s10664-024-10533-w
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Impact of log parsing on deep learning-based anomaly detection

Zanis Ali Khan,
Donghwan Shin,
Domenico Bianculli
et al.

Abstract: Software systems log massive amounts of data, recording important runtime information. Such logs are used, for example, for log-based anomaly detection, which aims to automatically detect abnormal behaviors of the system under analysis by processing the information recorded in its logs. Many log-based anomaly detection techniques based on deep learning models include a pre-processing step called log parsing. However, understanding the impact of log parsing on the accuracy of anomaly detection techniques has re… Show more

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