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一种新的L1度量Fisher线性判别分析研究
引用本文:余景丽,胡恩良,张 涛.一种新的L1度量Fisher线性判别分析研究[J].计算机工程与应用,2018,54(4):128-134.
作者姓名:余景丽  胡恩良  张 涛
作者单位:云南师范大学 数学学院,昆明 650500
摘    要:Fisher线性判别分析(Fisher Linear Discriminant Analysis,FLDA)是一种典型的监督型特征提取方法,旨在最大化Fisher准则,寻求最优投影矩阵。在标准Fisher准则中,涉及到的度量为L2]范数度量,此度量通常缺乏鲁棒性,对异常值点较敏感。为提高鲁棒性,引入了一种基于L1]范数度量的FLDA及其优化求解算法。实验结果表明:在很多情形下,相比于传统的L2]范数FLDA,L1]范数FLDA具有更好的分类精度和鲁棒性。

关 键 词:Fisher线性判别分析  Fisher准则  [L1]范数度量  鲁棒性  特征提取  

Study of Fisher linear discriminant analysis based on L_1-norm
YU Jingli,HU Enliang,ZHANG Tao.Study of Fisher linear discriminant analysis based on L_1-norm[J].Computer Engineering and Applications,2018,54(4):128-134.
Authors:YU Jingli  HU Enliang  ZHANG Tao
Affiliation:School of Mathematics, Yunnan Normal University, Kunming 650500, China
Abstract:Fisher Linear Discriminant Analysis(FLDA) is a classical method of feature extraction with supervised information, which maximizes the Fisher criterion to find the optimal projection matrix. In the criterion of standard FLDA, the involved metric is based on L2] norm metric, which is usually lack of robustness and sensitive to outliers. In order to improve the robustness, this paper proposes a new model and algorithm for FLDA, which is based on L1] norm metric. The experimental results show that, FLDA with L1] norm outperforms that with L2] norm in classification accuracy and robustness in many cases.
Keywords:Fisher linear discriminant analysis  Fisher criterion  [L1] norm metric  robustness  feature extraction  
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