概念漂移的定位:漂移数据点的识别

Fabian Hinder, Valerie Vaquet, Johannes Brinkrolf, André Artelt, Barbara Hammer
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引用次数: 2

摘要

概念漂移指的是观测数据的分布随时间变化的现象。因此,机器学习模型可能会变得不准确,需要调整。虽然确实存在检测概念漂移的方法,在数据流中找到变化点,或者在观测到漂移的情况下调整模型,但是定位漂移的问题,即在数据空间中识别它,还没有得到广泛的解决-特别是从形式的角度来看。然而,这个问题是很重要的,因为它可以检查最突出的特征,例如特征,其中漂移表现出来,因此可以用来做出明智的决策,例如在线学习算法的训练集的有效更新,并执行学习模型的精确调整。在本文中,我们提出了一个通用的理论框架,将漂移定位降低到一个监督机器学习问题。我们构建了一种新的漂移定位方法,并通过与文献中其他方法的比较,证明了我们的理论和算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization of Concept Drift: Identifying the Drifting Datapoints
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. While there do exist methods to detect concept drift, to find change points in data streams, or to adjust models in the presence of observed drift, the problem of localizing drift, i.e. identifying it in data space, is yet widely unsolved - in particular from a formal perspective. This problem however is of importance, since it enables an inspection of the most prominent characteristics, e.g. features, where drift manifests itself and can therefore be used to make informed decisions, e.g. efficient updates of the training set of online learning algorithms, and perform precise adjustments of the learning model. In this paper we present a general theoretical framework that reduces drift localization to a supervised machine learning problem. We construct a new method for drift localization thereon and demonstrate the usefulness of our theory and the performance of our algorithm by comparing it to other methods from the literature.
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