The performance of a new hybrid classifier based on boxes and nearest neighbors

Anthony, MartinORCID logo; and Ratsaby, Joel (2011) The performance of a new hybrid classifier based on boxes and nearest neighbors. Technical Report. Center for Operations Research, Rutgers University, Piscataway, New Jersey.
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In this paper we present a new type of binary classifier defined on the unit cube. This classifier combines some of the aspects of the standard methods that have been used in the logical analysis of data (LAD) and geometric classifiers, with a nearest-neighbor paradigm. We assess the predictive performance of the new classifier in learning from a sample, obtaining generalization error bounds that improve as the ‘sample width’ of the classifier increases.

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