Is bagging effective in the classification of small-sample genomic and proteomic data?

T T Vu, U M Braga-Neto
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引用次数: 10

Abstract

There has been considerable interest recently in the application of bagging in the classification of both gene-expression data and protein-abundance mass spectrometry data. The approach is often justified by the improvement it produces on the performance of unstable, overfitting classification rules under small-sample situations. However, the question of real practical interest is whether the ensemble scheme will improve performance of those classifiers sufficiently to beat the performance of single stable, nonoverfitting classifiers, in the case of small-sample genomic and proteomic data sets. To investigate that question, we conducted a detailed empirical study, using publicly-available data sets from published genomic and proteomic studies. We observed that, under t-test and RELIEF filter-based feature selection, bagging generally does a good job of improving the performance of unstable, overfitting classifiers, such as CART decision trees and neural networks, but that improvement was not sufficient to beat the performance of single stable, nonoverfitting classifiers, such as diagonal and plain linear discriminant analysis, or 3-nearest neighbors. Furthermore, as expected, the ensemble method did not improve the performance of these classifiers significantly. Representative experimental results are presented and discussed in this work.

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bagging在小样本基因组和蛋白质组学数据分类中有效吗?
最近在基因表达数据和蛋白质丰度质谱数据的分类中应用bagging技术引起了相当大的兴趣。在小样本情况下,这种方法对不稳定的、过拟合的分类规则的性能的改进通常是合理的。然而,真正实际的问题是,在小样本基因组和蛋白质组学数据集的情况下,集成方案是否能够充分提高这些分类器的性能,以击败单一稳定的、非过拟合的分类器的性能。为了调查这个问题,我们进行了一项详细的实证研究,使用了来自已发表的基因组和蛋白质组学研究的公开数据集。我们观察到,在t检验和基于RELIEF滤波器的特征选择下,套袋通常可以很好地提高不稳定、过拟合分类器(如CART决策树和神经网络)的性能,但这种改进不足以击败单一稳定、非过拟合分类器(如对角和普通线性判别分析)或3近邻分类器的性能。此外,正如预期的那样,集成方法并没有显著提高这些分类器的性能。本文给出了具有代表性的实验结果,并对其进行了讨论。
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