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A Simple Unlearning Framework for Online Learning Under Concept Drifts

机译:概念漂移下的在线学习的简单学习框架

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Real-world online learning applications often face data coming from changing target functions or distributions. Such changes, called the concept drift, degrade the performance of traditional online learning algorithms. Thus, many existing works focus on detecting concept drift based on statistical evidence. Other works use sliding window or similar mechanisms to select the data that closely reflect current concept. Nevertheless, few works study how the detection and selection techniques can be combined to improve the learning performance. We propose a novel framework on top of existing online learning algorithms to improve the learning performance under concept drifts. The framework detects the possible concept drift by checking whether forgetting some older data may be helpful, and then conduct forgetting through a step called unlearning. The framework effectively results in a dynamic sliding window that selects some data flexibly for different kinds of concept drifts. We design concrete approaches from the framework based on three popular online learning algorithms. Empirical results show that the framework consistently improves those algorithms on ten synthetic data sets and two real-world data sets.
机译:现实世界中的在线学习应用程序通常会面对来自不断变化的目标功能或分布的数据。这种称为概念漂移的变化会降低传统在线学习算法的性能。因此,许多现有的工作集中在基于统计证据的概念漂移检测上。其他作品使用滑动窗口或类似机制来选择与当前概念紧密相关的数据。然而,很少有作品研究如何将检测和选择技术结合起来以提高学习性能。我们在现有在线学习算法的基础上提出了一个新颖的框架,以提高概念漂移下的学习性能。该框架通过检查遗忘一些较旧的数据是否有帮助,然后通过称为“取消学习”的步骤进行遗忘,来检测可能出现的概念偏差。该框架有效地产生了动态滑动窗口,该窗口为不同类型的概念漂移灵活地选择了一些数据。我们基于三种流行的在线学习算法,从框架中设计了具体的方法。实验结果表明,该框架在十个合成数据集和两个真实世界数据集上不断改进了这些算法。

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