Linear dimension reduction and Bayes classification with unknown population parameters

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摘要

Odell and Decell, Odell and Coberly gave necessary and sufficient conditions for the smallest dimension compression matrix B such that the Bayes classification regions are preserved. That is, they developed an explicit expression of a compression matrix B such that the Bayes classification assignment are the same for both the original space x and the compressed space Bx. Odell indicated that whenever the population parameters are unknown, then the dimension of Bx is the same as x with probability one. Furthermore, Odell posed the problem of finding a lower dimension q < p which in some sense best fits the range space generated by the matrix M. The purpose of this paper is to discuss this problem and provide a partial solution.

论文关键词:Bayes classification procedure,Probability of misclassification,Dimension reduction,Feature selection,Singular value decomposition,Projection operator

论文评审过程:Received 6 January 1981, Revised 6 May 1981, Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(82)90068-1