处理类不平衡问题的方法对P300检测的影响

Guoqiang Xu, S. Furao, Jinxi Zhao
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引用次数: 6

摘要

本文研究了不同采样方法对BCI P300拼字器不平衡数据的训练效果。考虑过采样和欠采样。除了现有的一些方法如SMOTE已经被证明可以有效地解决类不平衡问题外,我们还提出了一种新的欠采样技术,即基于P300数据集特性的实例移除算法。用于测试的分类器是FLDA和线性支持向量机。实验结果表明,并不是所有的采样方法对P300检测都是有效的,即使相同的方法对不同的分类器也可能有不同的影响。结果表明,作为过采样的一种变体,SMOTE技术在FLDA分类器的训练中是非常有效的,而其他方法在FLDA和线性支持向量机的训练中都是略微有效或无效的。研究还表明,在两个分类器上,过采样比欠采样更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The effect of methods addressing the class imbalance problem on P300 detection
This paper studies empirically the effect of different sampling methods on training classifiers on the imbalanced data of the BCI P300 Speller. Both over-sampling and under-sampling are considered. Besides some existing methods like SMOTE that have been shown to be effective in addressing the class imbalance problem we also proposed a new under-sampling technology, namely, instance-remove algorithm which is based on the property of P300 data sets. The classifiers for testing are FLDA and linear SVM. Experimental results suggest that not all of the sampling methods are effective in P300 detection, and even the same method may have different influence on different classifiers. It reveals that the SMOTE technique which is a variant of over-sampling is very effective in training an FLDA classifier while other methods are slightly effective or ineffective both in training FLDA and Linear SVM. The study also suggests that the over-sampling is more effective than under-sampling on both classifiers.
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