On the sampling distribution of resubstitution and leave-one-out error estimators for linear classifiers
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摘要
Error estimation is a problem of high current interest in many areas of application. This paper concerns the classical problem of determining the performance of error estimators in small-sample settings under a Gaussianity parametric assumption. We provide here for the first time the exact sampling distribution of the resubstitution and leave-one-out error estimators for linear discriminant analysis (LDA) in the univariate case, which is valid for any sample size and combination of parameters (including unequal variances and sample sizes for each class). In the multivariate case, we provide a quasi-binomial approximation to the distribution of both the resubstitution and leave-one-out error estimators for LDA, under a common but otherwise arbitrary class covariance matrix, which is assumed to be known in the design of the LDA discriminant. We provide numerical examples, using both synthetic and real data, that indicate that these approximations are accurate, provided that LDA classification error is not too large.
论文关键词:Error estimation,Parametric classification,Linear discriminant analysis,Sampling distribution,Resubstitution,Leave-one-out
论文评审过程:Received 4 April 2008, Revised 16 March 2009, Accepted 1 May 2009, Available online 14 May 2009.
论文官网地址:https://doi.org/10.1016/j.patcog.2009.05.003