Relative Local Mean Classifier with Optimized Decision Rule

  title={Relative Local Mean Classifier with Optimized Decision Rule},
  author={Guihua Wen and Lijun Jiang},
  journal={2011 Seventh International Conference on Computational Intelligence and Security},
Local mean classifier can achieve good effect for many real problems and need not explicitly determine the prototypes beforehand. However, it still can not be comparable with human being in classification on the noisy, the sparse, and the high dimensional data. This paper proposes an new approach, called relative local mean classifier(RLMC), to overcome this problem by utilizing the perceptual relativity. It finds k nearest neighbors for the query sample from each class and then performs the… CONTINUE READING

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