论文标题

概念漂移的反事实解释

Counterfactual Explanations of Concept Drift

论文作者

Hinder, Fabian, Hammer, Barbara

论文摘要

概念漂移的概念是指在观察到的数据下的分布随时间变化的现象。结果,机器学习模型可能会变得不准确,需要调整。尽管确实存在检测概念漂移或在观察到的漂移存在下调整模型的方法,但到目前为止,几乎没有考虑解释漂移的问题。这个问题很重要,因为它可以检查漂移本身的最突出特征。因此,它可以使人类对变革的必要性的理解,并增加对终身学习模型的接受。在本文中,我们提出了一种新颖的技术,该技术以基于反事实解释为典型示例的空间特征的特征变化来表征概念漂移。我们建立了对此问题的形式定义,基于反事实解释得出了有效的算法解决方案,并在几个示例中证明了其有用性。

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 or to adjust models in the presence of observed drift, the question of explaining drift has hardly been considered so far. This problem is of importance, since it enables an inspection of the most prominent features where drift manifests itself; hence it enables human understanding of the necessity of change and it increases acceptance of life-long learning models. In this paper we present a novel technology, which characterizes concept drift in terms of the characteristic change of spatial features represented by typical examples based on counterfactual explanations. We establish a formal definition of this problem, derive an efficient algorithmic solution based on counterfactual explanations, and demonstrate its usefulness in several examples.

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