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GPU-Accelerated Extreme Learning Machines for Imbalanced Data Streams with Concept Drift

机译:GPU加速的极限学习机,用于概念漂移的不平衡数据流

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Mining data streams is one of the most vital fields in the current era of big data. Continuously arriving data may pose various problems, connected to their volume, variety or velocity. In this paper we focus on two important difficulties embedded in the nature of data streams: non- stationary nature and skewed class distributions. Such a scenario requires a classifier that is able to rapidly adapt itself to concept drift and displays robustness to class imbalance problem. We propose to use online version of Extreme Learning Machine that is enhanced by an efficient drift detector and method to alleviate the bias towards the majority class. We investigate three approaches based on undersampling, oversampling and cost-sensitive adaptation. Additionally, to allow for a rapid updating of the proposed classifier we show how to implement online Extreme Learning Machines with the usage of GPU. The proposed approach allows for a highly efficient mining of high-speed, drifting and imbalanced data streams with significant acceleration offered by GPU processing.
机译:挖掘数据流是当前大数据时代最重要的领域之一。连续到达的数据可能会引起各种问题,这些问题与它们的数量,种类或速度有关。在本文中,我们关注于数据流本质中嵌入的两个重要困难:非平稳本质和倾斜的类分布。这种情况要求分类器能够快速适应概念漂移,并显示出对分类不平衡问题的鲁棒性。我们建议使用在线版本的极限学习机,该版本通过高效的漂移检测器和方法进行了增强,以减轻对多数学生的偏见。我们研究了基于欠采样,过采样和成本敏感的自适应的三种方法。此外,为了快速更新建议的分类器,我们展示了如何使用GPU来实现在线Extreme Learning Machines。所提出的方法允许以GPU处理提供的显着加速高效地挖掘高速,漂移和不平衡的数据流。

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