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Accuracy weighted diversity-based online boosting

机译:基于精确的加权分集在线提升

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摘要

Target distributional change occurring in a data stream known as concept drift, causes a challenging task for an online learning method, as the accuracy of an online learning method may decrease due to these changes. In this paper, the Accuracy Weighted Diversity-based Online Boosting (AWDOB) method has been proposed, which is based on Adaptable Diversity-based Online Boosting (ADOB) and, other modifications. More precisely, AWDOB uses the proposed accuracy weighting scheme which is based on previous expert's results of the sums of correctly classified and incorrectly classified instances to calculate the weight of current expert, which improved the overall accuracy of the AWDOB. Experiments were conducted to compare the accuracy results of AWDOB against other methods using ten real-world datasets and thirty-two artificial datasets. Artificial datasets were generated by the four artificial data generators which included gradual and abrupt concept drifts within them. Experimental results suggest that AWDOB beats the accuracy results of other tested methods. (c) 2020 Elsevier Ltd. All rights reserved.
机译:在称为概念漂移的数据流中发生的目标分布变化导致在线学习方法的具有挑战性的任务,因为在线学习方法的准确性可能由于这些变化而降低。在本文中,提出了基于精度加权分集的在线提​​升(AWDOB)方法,其基于适应性的分集在线提升(ADOB)以及其他修改。更准确地说,AWDOB使用所提出的准确性加权方案,该方案基于先前的专家的结果,以计算当前专家的权重的正确分类和错误分类的实例的总和,这提高了AWDOB的整体准确性。进行实验以比较AWDOB对其他方法的准确性结果,使用十个现实世界数据集和三十二个人工数据集。由四个人工数据发生器产生人工数据集,其中包括逐渐且突然的概念在它们内漂移。实验结果表明,AWDOB击败了其他测试方法的准确性结果。 (c)2020 elestvier有限公司保留所有权利。

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