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Dynamic Weighted Majority for Incremental Learning of Imbalanced Data Streams with Concept Drift

机译:具有概念漂移的不平衡数据流的动态加权多数

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Concept drifts occurring in data streams will jeopardize the accuracy and stability of the online learning process. If the data stream is imbalanced, it will be even more challenging to detect and cure the concept drift. In the literature, these two problems have been intensively addressed separately, but have yet to be well studied when they occur together. In this paper, we propose a chunk-based incremental learning method called Dynamic Weighted Majority for Imbalance Learning (DWMIL) to deal with the data streams with concept drift and class imbalance problem. DWMIL utilizes an ensemble framework by dynamically weighting the base classifiers according to their performance on the current data chunk. Compared with the existing methods, its merits are four-fold: (1) it can keep stable for non-drifted streams and quickly adapt to the new concept; (2) it is totally incremental, i.e. no previous data needs to be stored; (3) it keeps a limited number of classifiers to ensure high efficiency; and (4) it is simple and needs only one thresholding parameter. Experiments on both synthetic and real data sets with concept drift show that DWMIL performs better than the state-of-the-art competitors, with less computational cost.
机译:数据流中发生的概念漂移将危及在线学习过程的准确性和稳定性。如果数据流是不平衡的,则检测和治愈概念漂移更具挑战性。在文献中,这两个问题已被分开进行了密集的解决,但在它们一起发生时尚未得到很好的研究。在本文中,我们提出了一种基于块的增量学习方法,称为动态加权大多数用于不平衡学习(DWMIL),以处理具有概念漂移和类不平衡问题的数据流。 DWMIL通过根据当前数据块的性能动态加权基本分类器来利用集合框架。与现有方法相比,其优点是四倍:(1)它可以保持不漂移的流稳定,并迅速适应新概念; (2)它是完全增量的,即,未经先前的数据需要存储; (3)它保持有限数量的分类器,以确保高效率; (4)简单,只需要一个阈值参数。具有概念漂移的合成和真实数据集的实验表明,DWMIL比最先进的竞争对手更好,计算成本较少。

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