基于堆叠和旋转的数据约简机器学习分类技术

I. Czarnowski, P. Jędrzejowicz
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引用次数: 4

摘要

本文主要研究利用基于堆叠和旋转的技术来提高机器学习数据约简分类的性能和泛化能力。数据约简技术的目的是减少学习高质量分类器所需的信息量,特别是当数据量很大时。本文表明,将基于堆叠和旋转的集成技术与基于数据约简的机器分类相结合,可以在分类过程的准确性方面带来额外的好处。这个发现已经被计算实验证实了。文中对该方法进行了描述,并对计算实验结果进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stacking and rotation-based technique for machine learning classification with data reduction
The paper focuses on using stacking and rotation-based technique to improve performance and generalization ability of the machine learning classification with data reduction. The aim of data reduction technique is decreasing the quantity of information required to learn a high quality classifiers, especially when the data are huge. The paper shows that merging both stacking and rotation-based ensemble techniques with machine classification based on data reduction may bring additional benefits with respect to the accuracy of the classification process. The finding that has been confirmed by computational experiments. The paper includes the description of the approach and the discussion of the computational experiment results.
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