On Error and Compression Rates for Prototype Rules
DOI:
https://doi.org/10.1609/aaai.v37i7.25993Keywords:
ML: Learning Theory, ML: Other Foundations of Machine LearningAbstract
We study the close interplay between error and compression in the non-parametric multiclass classification setting in terms of prototype learning rules. We focus in particular on a recently proposed compression-based learning rule termed OptiNet. Beyond its computational merits, this rule has been recently shown to be universally consistent in any metric instance space that admits a universally consistent rule---the first learning algorithm known to enjoy this property. However, its error and compression rates have been left open. Here we derive such rates in the case where instances reside in Euclidean space under commonly posed smoothness and tail conditions on the data distribution. We first show that OptiNet achieves non-trivial compression rates while enjoying near minimax-optimal error rates. We then proceed to study a novel general compression scheme for further compressing prototype rules that locally adapts to the noise level without sacrificing accuracy. Applying it to OptiNet, we show that under a geometric margin condition further gain in the compression rate is achieved. Experimental results comparing the performance of the various methods are presented.Downloads
Published
2023-06-26
How to Cite
Kerem, O., & Weiss, R. (2023). On Error and Compression Rates for Prototype Rules. Proceedings of the AAAI Conference on Artificial Intelligence, 37(7), 8228-8236. https://doi.org/10.1609/aaai.v37i7.25993
Issue
Section
AAAI Technical Track on Machine Learning II