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Adaptive online extreme learning machine by regulating forgetting factor by concept drift map

机译:通过概念漂移图调节遗忘因子的自适应在线极限学习机

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In online-learning, the data is incrementally received and the distributions from which it is drawn may keep changing over time. This phenomenon is widely known as concept drift. Such changes may affect the generalization of a learned model to future data. This problem may be exacerbated by the form of the drift itself changing over time. Quantitative measures to describe and analyze the concept drift have been proposed in previous work. A description composed from these measures is called a concept drift map. We believe that these maps could be useful for guiding how much knowledge in the old model should be forgotten. Therefore, this paper presents an adaptive online learning model that uses a concept drift map to regulate the forgetting factor of an extreme learning machine. Specifically, when a batch of new instances are labeled, the distribution of each class on each attribute is firstly estimated, and then it is compared with the distribution estimated in the previous batch to calculate the magnitude of concept drift, which is further used to regulate the forgetting factor and to update the learning model. Therefore, the novelty of this paper lies in that a quantitative distance metric between two distributions constructed on continuous attribute space is presented to construct concept drift map which can be further associated with the forgetting factor to make the learning model adapt the concept drift. Experimental results on several benchmark stream data sets show the proposed model is generally superior to several previous algorithms when classifying a variety of data streams subject to drift, indicating its effectiveness and feasibility. (C) 2019 Elsevier B.V. All rights reserved.
机译:在在线学习中,数据是增量接收的,从中提取数据的分布可能会随着时间的推移而不断变化。这种现象被广泛称为概念漂移。此类更改可能会影响将学习的模型推广到将来的数据。漂移本身随时间变化的形式可能会加剧该问题。在先前的工作中已经提出了定量的方法来描述和分析概念漂移。由这些量度组成的描述称为概念漂移图。我们认为,这些地图对于指导应忘记多少旧模型的知识可能很有用。因此,本文提出了一种自适应在线学习模型,该模型使用概念漂移图来调节极端学习机的遗忘因子。具体来说,当标记一批新实例时,首先估计每个类在每个属性上的分布,然后将其与前一批中估计的分布进行比较,以计算概念漂移的幅度,并进一步用于调节遗忘因素并更新学习模型。因此,本文的新颖之处在于,提出了在连续属性空间上构造的两个分布之间的定量距离度量,以构造概念漂移图,该图可以进一步与遗忘因子相关联,以使学习模型适应概念漂移。在几个基准流数据集上的实验结果表明,在对各种容易发生漂移的数据流进行分类时,所提出的模型通常优于以前的几种算法,表明了其有效性和可行性。 (C)2019 Elsevier B.V.保留所有权利。

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