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An overview and a benchmark of active learning for outlier detection with one-class classifiers

机译:一个概述和与单级分类器的异常学习的主动学习基准

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摘要

Active learning methods increase classification quality by means of user feedback. An important subcategory is active learning for outlier detection with one-class classifiers. While various methods in this category exist, selecting one for a given application scenario is difficult. This is because existing methods rely on different assumptions, have different objectives, and often are tailored to a specific use case. All this calls for a comprehensive comparison, the topic of this article.This article starts with a categorization of the various methods. Interestingly, many assumptions in the literature are implicit, and their impact has not been discussed so far. Based on this, we propose a novel approach to evaluate active learning results by quantifying how classification results evolve with more user feedback, in a compact and nuanced manner. We run over 84,000 experiments to compare state-of-the-art one-class active learning methods, for a broad variety of scenarios. One key finding is that there is no single active learning method that stands out in a competitive evaluation. Instead, we found that selecting a good query strategy alone is not sufficient, since results hinge significantly on other factors, such as the selection of hyperparameter values. Our results show that some configurations are more robust than others. We conclude by phrasing our findings as guidelines on how to select active learning methods for outlier detection with one-class classifiers.
机译:主动学习方法通​​过用户反馈提高分类质量。一个重要的子类别是以单级分类器的远离异常检测的主动学习。虽然存在此类别中的各种方法,但为给定的应用程序方案选择一个是困难的。这是因为现有方法依赖于不同的假设,具有不同的目标,并且通常对特定用例定制。所有这些都可以进行全面比较,本文的主题。这篇文章从各种方法的分类开始。有趣的是,文献中的许多假设是隐含的,到目前为止,他们的影响尚未讨论。基于这一点,我们提出了一种新颖的方法来评估积极学习结果,通过量化分类结果与更多的用户反馈,紧凑且细致的方式。我们运行超过84,000个实验,以比较最先进的单级主动学习方法,以获得各种各样的情景。一个关键发现是,没有单一的活动学习方法在竞争性评估中脱颖而出。相反,我们发现单独选择一个好的查询策略是不够的,因为结果显着铰接在其他因素上,例如诸如HyperParameter值的选择。我们的结果表明,某些配置比其他配置更强大。我们通过将我们的发现作为如何选择具有单级分类器的异常分类检测的主动学习方法的指导方针来结束。

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