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A Classifier Graph Based Recurring Concept Detection and Prediction Approach

机译:基于分类器图的递归概念检测与预测方法

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It is common in real-world data streams that previously seen concepts will reappear, which suggests a unique kind of concept drift, known as recurring concepts. Unfortunately, most of existing algorithms do not take full account of this case. Motivated by this challenge, a novel paradigm was proposed for capturing and exploiting recurring concepts in data streams. It not only incorporates a distribution-based change detector for handling concept drift but also captures recurring concept by storing recurring concepts in a classifier graph. The possibility of detecting recurring drifts allows reusing previously learnt models and enhancing the overall learning performance. Extensive experiments on both synthetic and real-world data streams reveal that the approach performs significantly better than the state-of-the-art algorithms, especially when concepts reappear.
机译:在现实世界的数据流中,以前见过的概念会重新出现是很常见的,这暗示着一种独特的概念漂移,称为循环概念。不幸的是,大多数现有算法并未完全考虑这种情况。受这一挑战的推动,提出了一种新颖的范例,用于捕获和利用数据流中的重复出现的概念。它不仅包含用于处理概念漂移的基于分布的更改检测器,而且还通过将重复概念存储在分类器图中来捕获重复概念。检测重复漂移的可能性允许重用先前学习的模型并增强整体学习性能。对合成数据流和实际数据流进行的大量实验表明,该方法的性能明显优于最新算法,尤其是在重新出现概念时。

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