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

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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.

论文关键词:Error estimation,Distribution complexity,Small samples,Complexity of decision boundary

论文评审过程:Received 13 February 2012, Revised 22 October 2012, Accepted 27 October 2012, Available online 6 November 2012.

论文官网地址:https://doi.org/10.1016/j.patcog.2012.10.020