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Relationship between the accuracy of classifier error estimation and complexity of decision boundary

机译:分类器误差估计的精度与决策边界复杂度的关系

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摘要

Error estimation is a crucial part of classification methodology and it becomes problematic with small samples. We demonstrate here that the complexity of the decision boundary plays a key role on the performance of error estimation methods. First, a model is developed which quantifies the complexity of a classification problem purely in terms of the geometry of the decision boundary, without relying on the Bayes error. Then, this model is used in a simulation study to analyze the bias and root-mean-square (RMS) error of a few widely used error estimation methods relative to the complexity of the decision boundary: resubstitution, leave-one-out, 10-fold cross-validation with repetition, 0.632 bootstrap, and bolstered resubstitution, in two- and three-dimensional spaces. Each estimator is implemented with three classification rules: quadratic discriminant analysis (QDA), 3-nearest-neighbor (3NN) and two-layer neural network (NNet). The results show that all the estimation methods lose accuracy as complexity increases.
机译:误差估计是分类方法的关键部分,对于小样本,误差估计成为问题。我们在这里证明决策边界的复杂性对误差估计方法的性能起着关键作用。首先,开发了一个模型,该模型仅根据决策边界的几何形状来量化分类问题的复杂性,而无需依赖贝叶斯误差。然后,将该模型用于仿真研究中,以分析相对于决策边界复杂性的几种广泛使用的误差估计方法的偏差和均方根(RMS)误差:重新替代,留一法,10在二维和三维空间中具有重复,0.632引导程序和支持的重新替换的多重折叠交叉验证。每个估算器都采用三种分类规则来实现:二次判别分析(QDA),3-最近邻(3NN)和两层神经网络(NNet)。结果表明,随着复杂度的增加,所有估计方法都失去了准确性。

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