高维空间支撑误差估计的朴素贝叶斯方法

Xing Jiang, U. Braga-Neto
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引用次数: 8

摘要

支持误差估计已被证明比交叉验证执行得更好,并且在小样本设置中与bootstrap竞争。然而,在基因组信号处理中普遍存在的高维环境下,其性能会下降。本文提出了一种基于朴素贝叶斯原理的增强误差估计的改进方法。我们不是试图从小样本中估计高维空间中球形支撑核的单一方差参数,而是假设一个椭球核,并沿每个变量分别估计每个单变量方差。在基于基因表达数据模型和线性支持向量机分类规则的仿真结果中,新的增强估计器明显优于旧的增强估计器,以及交叉验证和重新替换,并且除了选择较大的特征集外,也优于0.632 bootstrap。
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A Naive-Bayes approach to Bolstered error estimation in high-dimensional spaces
Bolstered error estimation has been shown to perform better than cross-validation and competitively with bootstrap in small-sample settings. However, its performance can deteriorate in the high-dimensional settings prevalent in Genomic Signal Processing. We propose here a modification of Bolstered error estimation that is based on the principle of Naive Bayes. Rather than attempting to estimate a single variance parameter for a spherical bolstering kernel in high-dimensional spaces from a small sample, we assume an ellipsoidal kernel and estimate each univariate variance separately along each variable. In simulation results based on a model for gene-expression data and a linear SVM classification rule, the new bolstered estimator clearly outperformed the old one, as well as cross-validation and resubstitution, and was also superior to the 0.632 bootstrap except in the case where a large feature set is selected.
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