Discriminant Adaptive Nearest Neighbor Classification and Regression
–Neural Information Processing Systems
Nearest neighbor classification expects the class conditional prob(cid:173) abilities to be locally constant, and suffers from bias in high di(cid:173) mensions We propose a locally adaptive form of nearest neighbor classification to try to finesse this curse of dimensionality. We use a local linear discriminant analysis to estimate an effective met(cid:173) ric for computing neighborhoods. We determine the local decision boundaries from centroid information, and then shrink neighbor(cid:173) hoods in directions orthogonal to these local decision boundaries, and elongate them parallel to the boundaries. Thereafter, any neighborhood-based classifier can be employed, using the modified neighborhoods. We also propose a method for global dimension reduction, that combines local dimension information.
Neural Information Processing Systems
Apr-6-2023, 18:32:32 GMT
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