论文标题

使用集合分类和证据理论的异常检测

Anomaly Detection using Ensemble Classification and Evidence Theory

论文作者

Arévalo, Fernando, Ibrahim, Tahasanul, Piolo, Christian Alison M., Schwung, Andreas

论文摘要

多级合奏分类仍然是研究界调查的流行重点。由于容易部署大型机器学习模型,因此云服务的普及加剧了他们的采用。它还引起了工业部门的注意,因为它能够发现生产中的常见问题。但是,要符合整体分类器的挑战,即对分类器池进行适当的选择和有效的培训,用于多类分类的适当体系结构的定义以及集合分类器的不确定性量化。合奏分类器的鲁棒性和有效性在于选择分类器池以及学习过程。因此,分类器池的选择和训练程序起着至关重要的作用。 (合奏)分类器学会检测监督培训期间使用的课程。但是,在注射未知条件的数据时,训练有素的分类器将打算预测培训期间学到的课程。为此,可以使用个人和整体分类器的不确定性来评估学习能力。我们提出了一种使用集合分类和证据理论的新颖检测方法。提出了泳池选择策略以构建坚实的集成分类器。我们提出了一种用于多级集合分类的体系结构,以及一种量化单个分类器和集合分类器的不确定性的方法。我们将不确定性用于异常检测方法。最后,我们使用基准田纳西·伊士曼(Tennessee Eastman)进行实验,以测试集成分类器的预测和异常检测功能。

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 learns to detect the classes that were used during the supervised training. However, when injecting data with unknown conditions, the trained classifier will intend to predict the classes learned during the training. To this end, the uncertainty of the individual and ensemble classifier could be used to assess the learning capability. We present a novel approach for novel detection using ensemble classification and evidence theory. A pool selection strategy is presented to build a solid ensemble classifier. We present an architecture for multi-class ensemble classification and an approach to quantify the uncertainty of the individual classifiers and the ensemble classifier. We use uncertainty for the anomaly detection approach. Finally, we use the benchmark Tennessee Eastman to perform experiments to test the ensemble classifier's prediction and anomaly detection capabilities.

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