Class Distribution Monitoring for Concept Drift Detection

Diego Stucchi, Luca Frittoli, G. Boracchi
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引用次数: 1

Abstract

We introduce Class Distribution Monitoring (CDM), an effective concept-drift detection scheme that monitors the class-conditional distributions of a datastream. In particular, our solution leverages multiple instances of an online and nonparametric change-detection algorithm based on QuantTree. CDM reports a concept drift after detecting a distribution change in any class, thus identifying which classes are affected by the concept drift. This can be precious information for diagnostics and adaptation. Our experiments on synthetic and real-world datastreams show that when the concept drift affects a few classes, CDM outperforms algorithms monitoring the overall data distribution, while achieving similar detection delays when the drift affects all the classes. Moreover, CDM outperforms comparable approaches that monitor the classification error, particularly when the change is not very apparent. Finally, we demonstrate that CDM inherits the properties of the underlying change detector, yielding an effective control over the expected time before a false alarm, or Average Run Length (ARL0).
概念漂移检测的类分布监测
我们介绍了类分布监控(CDM),这是一种有效的概念漂移检测方案,用于监控数据流的类条件分布。特别是,我们的解决方案利用了基于quantreree的在线和非参数变化检测算法的多个实例。CDM在检测到任何类中的分布变化后报告概念漂移,从而确定哪些类受到概念漂移的影响。这可能是诊断和适应的宝贵信息。我们在合成数据流和真实数据流上的实验表明,当概念漂移影响几个类时,CDM优于监控整体数据分布的算法,同时在漂移影响所有类时实现类似的检测延迟。此外,CDM优于监视分类错误的类似方法,特别是在变化不是很明显的情况下。最后,我们演示了CDM继承了底层变更检测器的属性,在出现假警报之前产生对预期时间或平均运行长度(ARL0)的有效控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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