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A novel approach using incremental oversampling for data stream mining

机译:一种使用增量过采样进行数据流挖掘的新方法

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摘要

Data stream mining is very popular in recent years with advanced electronic devices generating continuous data streams. The performance of standard learning algorithms is been compromised with imbalance nature present in real world data streams. In this paper we propose a novel algorithm dubbed as increment over sampling for data streams (IOSDS) which uses an unique over sampling technique to almost balance the data sets to minimize the effect of imbalance in stream mining process. The experimental analysis is conducted on 15 data chunks of data streams with varied sizes and different imbalance ratios. The results suggests that the proposed IOSDS algorithm improves the knowledge discovery over benchmark algorithms like C4.5 and Hoeffding tree in terms of standard performance measures namely accuracy, AUC, precision, recall and F-measure.
机译:近年来,数据流挖掘非常受欢迎,先进的电子设备生成连续数据流。 标准学习算法的性能受到现实世界数据流中存在的不平衡性质。 在本文中,我们提出了一种新颖的算法,作为数据流的采样(IOSD)的增量,它使用唯一的采样技术来几乎平衡数据集以最小化流入挖掘过程中不平衡的效果。 实验分析在具有不同尺寸和不同不平衡比的数据流的15个数据块上进行。 结果表明,在标准性能方面,所提出的IOSDS算法可以通过C4.5和Hoeffding树等基准算法提高知识发现。准确性,AUC,精度,召回和F测量。

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