Optimal discriminant plane for a small number of samples and design method of classifier on the plane

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In a previous work (Zi-Quan Hong and Jing-Yu Yang, Minimum distance classifier on the optimal discriminant plane), we suggested and derived a method for constructing classifier on the optimal discriminant plane using minimum distance criteria. In this paper, the problem of solving optimal discriminant plane for a small number of samples is discussed, which is based on the above paper by the same authors. In the case of a small number of samples, generalized eigenequation AX = λBX established for a large number of samples usually has no solution because within-class scatter matrix is singular. To obtain the solution of the generalized eigenequation, a new method is suggested, in which the Singular Value Perturbation is added to the within-class scatter matrix such that the matrix becomes a nonsingular matrix. Therefore, the generalized eigenequation can be solved using existing algorithms. We proved that the generalized eigenequations on the optimal discriminant plane are stable in respect of eigenvalues and the generalized eigenvectors are indeed the optimal discriminant directions, if the perturbation is subject to some certain conditions. The experimental results have shown that our method works well and the minimum distance classifier on the optimal discriminant plane can be constructed with high performance even in the case of a small number of samples.

论文关键词:Discriminant plane,Classifier design,Singular value decomposition,Matrix perturbation,Dimension compression,Discriminant vectors,Eigenvalue problem,Mapping

论文评审过程:Received 4 June 1990, Revised 18 June 1990, Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(91)90074-F