From classifiers to discriminators: A nearest neighbor rule induced discriminant analysis
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摘要
The current discriminant analysis method design is generally independent of classifiers, thus the connection between discriminant analysis methods and classifiers is loose. This paper provides a way to design discriminant analysis methods that are bound with classifiers. We begin with a local mean based nearest neighbor (LM-NN) classifier and use its decision rule to supervise the design of a discriminator. Therefore, the derived discriminator, called local mean based nearest neighbor discriminant analysis (LM-NNDA), matches the LM-NN classifier optimally in theory. In contrast to that LM-NNDA is a NN classifier induced discriminant analysis method, we further show that the classical Fisher linear discriminant analysis (FLDA) is a minimum distance classifier (i.e. nearest Class-mean classifier) induced discriminant analysis method. The proposed LM-NNDA method is evaluated using the CENPARMI handwritten numeral database, the NUST603 handwritten Chinese character database, the ETH80 object category database and the FERET face image database. The experimental results demonstrate the performance advantage of LM-NNDA over other feature extraction methods with respect to the LM-NN (or NN) classifier.
论文关键词:Classification,Classifier,Feature extraction,Discriminant analysis,Dimensionality reduction,Pattern recognition
论文评审过程:Received 15 February 2009, Revised 10 November 2010, Accepted 14 January 2011, Available online 21 January 2011.
论文官网地址:https://doi.org/10.1016/j.patcog.2011.01.009