A new method for one-dimensional linear feature transformations

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摘要

We propose a method for finding a linear transformation of an initial pattern space into a one-dimensional new space, which optimizes the L2 distance between density functions. We use an orthogonal expansion with Hermite functions to compute the criterion; we discuss both the truncation and the statistical variation error for this expansion. To avoid false local optima caused by sample variation, we choose the starting point with a coarse step optimization method. Experimental results with two-class and multi-class, both unimodal and multimodal, are presented.

论文关键词:Constrained optimization,Density estimation,Dimensionality reduction,Feature selection,Projection pursuit,Separation criterion

论文评审过程:Received 5 May 1989, Revised 8 September 1989, Accepted 27 September 1989, Available online 21 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(90)90096-4