Anomaly Detection using Ensemble Classification and Evidence Theory
Fernando Ar\'evalo, Tahasanul Ibrahim, Christian Alison M. Piolo,, Andreas Schwung

TL;DR
This paper introduces a novel ensemble classification method combined with evidence theory for anomaly detection, emphasizing classifier pool selection, uncertainty quantification, and validation on the Tennessee Eastman benchmark.
Contribution
It proposes a new approach for anomaly detection using ensemble classification and evidence theory, including a pool selection strategy and uncertainty quantification.
Findings
Effective ensemble classifier for anomaly detection demonstrated on Tennessee Eastman benchmark.
Uncertainty measures improve detection of unknown or novel conditions.
Pool selection strategy enhances ensemble robustness and accuracy.
Abstract
Multi-class ensemble classification remains a popular focus of investigation within the research community. The popularization of cloud services has sped up their adoption due to the ease of deploying large-scale machine-learning models. It has also drawn the attention of the industrial sector because of its ability to identify common problems in production. However, there are challenges to conform an ensemble classifier, namely a proper selection and effective training of the pool of classifiers, the definition of a proper architecture for multi-class classification, and uncertainty quantification of the ensemble classifier. The robustness and effectiveness of the ensemble classifier lie in the selection of the pool of classifiers, as well as in the learning process. Hence, the selection and the training procedure of the pool of classifiers play a crucial role. An (ensemble) classifier…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection · Machine Learning and Data Classification
MethodsTest
