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An Optimization Criterion for Generalized Marginal Fisher Analysis on Undersampled Problems

An Optimization Criterion for Generalized Marginal Fisher Analysis on Undersampled Problems
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摘要 Marginal Fisher analysis (MFA) not only aims to maintain the original relations of neighboring data points of the same class but also wants to keep away neighboring data points of the different classes.MFA can effectively overcome the limitation of linear discriminant analysis (LDA) due to data distribution assumption and available projection directions.However,MFA confronts the undersampled problems.Generalized marginal Fisher analysis (GMFA) based on a new optimization criterion is presented,which is applicable to the undersampled problems.The solutions to the proposed criterion for GMFA are derived,which can be characterized in a closed form.Among the solutions,two specific algorithms,namely,normal MFA (NMFA) and orthogonal MFA (OMFA),are studied,and the methods to implement NMFA and OMFA are proposed.A comparative study on the undersampled problem of face recognition is conducted to evaluate NMFA and OMFA in terms of classification accuracy,which demonstrates the effectiveness of the proposed algorithms. Marginal Fisher analysis (MFA) not only aims to maintain the original relations of neighboring data points of the same class but also wants to keep away neighboring data points of the different classes.MFA can effectively overcome the limitation of linear discriminant analysis (LDA) due to data distribution assumption and available projection directions.However,MFA confronts the undersampled problems.Generalized marginal Fisher analysis (GMFA) based on a new optimization criterion is presented,which is applicable to the undersampled problems.The solutions to the proposed criterion for GMFA are derived,which can be characterized in a closed form.Among the solutions,two specific algorithms,namely,normal MFA (NMFA) and orthogonal MFA (OMFA),are studied,and the methods to implement NMFA and OMFA are proposed.A comparative study on the undersampled problem of face recognition is conducted to evaluate NMFA and OMFA in terms of classification accuracy,which demonstrates the effectiveness of the proposed algorithms.
出处 《International Journal of Automation and computing》 EI 2011年第2期193-200,共8页 国际自动化与计算杂志(英文版)
基金 supported by Science Foundation of the Fujian Province of China (No. 2010J05099)
关键词 Linear discriminant analysis (LDA) dimension reduction marginal Fisher analysis (MFA) normal MFA (NMFA) orthogonal MFA (OMFA). Linear discriminant analysis (LDA) dimension reduction marginal Fisher analysis (MFA) normal MFA (NMFA) orthogonal MFA (OMFA).
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