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Towards Non-Parametric Drift Detection via Dynamic Adapting Window Independence Drift Detection (DAWIDD)

机译:通过动态调整窗口独立漂移检测(DAWIDD)向非参数漂移检测

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The notion of concept drift refers to the phenomenon that the distribution, which is underlying the observed data, changes over time; as a consequence machine learning models may become inaccurate and need adjustment. Many online learning schemes include drift detection to actively detect and react to observed changes. Yet, reliable drift detection constitutes a challenging problem in particular in the context of high dimensional data, varying drift characteristics, and the absence of a parametric model such as a classification scheme which reflects the drift. In this paper we present a novel concept drift detection method, Dynamic Adapting Window Independence Drift Detection (DAWIDD), which aims for non-parametric drift detection of diverse drift characteristics. For this purpose, we establish a mathematical equivalence of the presence of drift to the dependency of specific random variables in an according drift process. This allows us to rely on independence tests rather than parametric models or the classification loss, resulting in a fairly robust scheme to universally detect different types of drift, as it is also confirmed in experiments.
机译:概念漂移的概念是指分布的现象,它依据观察到的数据,随着时间的推移而变化;由于后续机器学习模型可能会变得不准确,需要调整。许多在线学习计划包括漂移检测,以主动检测和反应观察到的变化。然而,可靠的漂移检测尤其在高维数据,不同漂移特性的背景下构成具有挑战性的问题,以及诸如反映漂移的分类方案的参数模型的不存在。本文介绍了一种新颖的概念漂移检测方法,动态调整窗体独立漂移检测(DAWIDD),其目的是非参数漂移检测不同漂移特性。为此目的,我们在根据漂移过程中建立漂移到特定随机变量依赖性的存在的数学等效。这使我们能够依赖于独立测试而不是参数模型或分类损失,导致普遍检测不同类型的漂移的相当强大的方案,因为它在实验中也证实了。

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