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The Impact of Diversity on Online Ensemble Learning in the Presence of Concept Drift

机译:存在概念漂移时多样性对在线集成学习的影响

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Online learning algorithms often have to operate in the presence of concept drift (i.e., the concepts to be learned can change with time). This paper presents a new categorization for concept drift, separating drifts according to different criteria into mutually exclusive and nonheterogeneous categories. Moreover, although ensembles of learning machines have been used to learn in the presence of concept drift, there has been no deep study of why they can be helpful for that and which of their features can contribute or not for that. As diversity is one of these features, we present a diversity analysis in the presence of different types of drifts. We show that, before the drift, ensembles with less diversity obtain lower test errors. On the other hand, it is a good strategy to maintain highly diverse ensembles to obtain lower test errors shortly after the drift independent on the type of drift, even though high diversity is more important for more severe drifts. Longer after the drift, high diversity becomes less important. Diversity by itself can help to reduce the initial increase in error caused by a drift, but does not provide the faster recovery from drifts in long-term.
机译:在线学习算法通常必须在概念漂移的情况下运行(即,要学习的概念可能会随时间变化)。本文提出了一种新的概念漂移分类,将根据不同标准的漂移分为互斥和非异构类别。而且,尽管在概念漂移的情况下已经使用了学习机的整体进行学习,但是还没有深入研究它们为什么可以对此有所帮助以及它们的哪些特征可以对此有所帮助。由于多样性是这些特征之一,因此我们在存在不同类型的漂移的情况下提出了多样性分析。我们表明,在漂移之前,具有较少多样性的合奏会获得较低的测试误差。另一方面,尽管高分集对于更严重的漂移而言更为重要,但保持较高多样性的集合以在漂移后不久获得与漂移类型无关的较低测试误差是一个很好的策略。漂移后的时间越长,高度多样性就越不重要。多样性本身可以帮助减少由漂移引起的误差的初始增加,但不能长期长期地从漂移中恢复。

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