线性判别分析
模式识别(心理学)
子空间拓扑
降维
人工智能
折叠(DSP实现)
核Fisher判别分析
计算机科学
维数之咒
判别式
主成分分析
数学
面部识别系统
电气工程
工程类
标识
DOI:10.1109/tpami.2022.3233572
摘要
Fisher's linear discriminant analysis (LDA) is an easy-to-use supervised dimensionality reduction method. However, LDA may be ineffective against complicated class distributions. It is well-known that deep feedforward neural networks with rectified linear units as activation functions can map many input neighborhoods to similar outputs by a succession of space-folding operations. This short paper shows that the space-folding operation can reveal to LDA classification information in the subspace where LDA cannot find any. A composition of LDA with the space-folding operation can find classification information more than LDA can do. End-to-end fine-tuning can improve that composition further. Experimental results on artificial and open data sets have shown the feasibility of the proposed approach.
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