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On Robustness of Adaptive Random Forest Classifier on Biomedical Data Stream

机译:生物医学数据流中自适应随机森林分类器的鲁棒性

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Data Stream represents a significant challenge for data analysis and data mining techniques because those techniques are developed based on training batch data. Classification technique that deals with data stream should have the ability for adapting its model for the new samples and forget the old ones. In this paper, we present an intensive comparison for the performance of six of popular classification techniques and focusing on the power of Adaptive Random Forest. The comparison was made based on four real medical datasets and for more reliable results, 40 other datasets were made by adding white noise to the original datasets. The experimental results showed the dominant of Adaptive Random Forest over five other techniques with high robustness against the change in data and noise.
机译:数据流对数据分析和数据挖掘技术提出了重大挑战,因为这些技术是基于训练批处理数据而开发的。处理数据流的分类技术应具有适应新样本的模型而忘记旧样本的能力。在本文中,我们对六种流行的分类技术的性能进行了深入的比较,并重点介绍了自适应随机森林的功能。比较是基于四个实际医学数据集进行的,为了获得更可靠的结果,通过在原始数据集中添加白噪声来制作其他40个数据集。实验结果表明,自适应随机森林优于其他五种技术,对数据和噪声的变化具有很高的鲁棒性。

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