The K-Nearest Neighbor Attractor-based Neural Network and the Optimal Linear Discriminatory Filter Classifier

@article{Dobeck2006TheKN,
  title={The K-Nearest Neighbor Attractor-based Neural Network and the Optimal Linear Discriminatory Filter Classifier},
  author={G. Dobeck},
  journal={OCEANS 2006},
  year={2006},
  pages={1-6}
}
The K-Nearest Neighbor Attractor-based Neural Network and the Optimal Linear Discriminatory Filter Classifier are feature-based classifiers that are trained via supervised learning using a training set of feature vectors. They were developed by the author and successfully used in several applications where they were "and-ed." Results using these classifiers have been published, but comprehensive descriptions of them have not appeared in the literature. This paper presents their detailed… CONTINUE READING
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