Abstract
We study universal consistency and convergence rates of simple nearest-neighbor prototype rules for the problem of multiclass classification in metric spaces. We first show that a novel data-dependent partitioning rule, named Proto-NN, is universally consistent in any metric space that admits a universally consistent rule. Proto-NN is a significant simplification of OptiNet, a recently proposed compression-based algorithm that, to date, was the only algorithm known to be universally consistent in such a general setting. Practically, Proto-NN is simpler to implement and enjoys reduced computational complexity. We then proceed to study convergence rates of the excess error probability. We first obtain rates for the standard k-NN rule under a margin condition and a new generalized- Lipschitz condition. The latter is an extension of a recently proposed modified-Lipschitz condition from Rd to metric spaces. Similarly to the modified-Lipschitz condition, the new condition avoids any boundness assumptions on the data distribution. While obtaining rates for Proto-NN is left open, we show that a second prototype rule that hybridizes between k-NN and Proto-NN achieves the same rates as k-NN while enjoying similar computational advantages as Proto-NN. However, as k-NN, this hybrid rule is not consistent in general.
Original language | English |
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Pages (from-to) | 1-25 |
Number of pages | 25 |
Journal | Journal of Machine Learning Research |
Volume | 22 |
State | Published - 1 Jul 2021 |
Keywords
- Error probability
- K-nearest-neighbor rule
- Metric space
- Multiclass classification
- Prototype nearest-neighbor rule
- Rate of convergence
- Universal consistency
All Science Journal Classification (ASJC) codes
- Software
- Artificial Intelligence
- Control and Systems Engineering
- Statistics and Probability