Multiclass Boosting: Simple and Intuitive Weak Learning Criteria

Nataly Brukhim
Shay Moran
NeurIPS 2023

Abstract

We study a generalization of boosting to the multiclass setting.
We introduce a weak learning condition for multiclass classification that captures the original notion of weak learnability as being “slightly better than random guessing”. We give a simple and efficient boosting algorithm, that does not require realizability assumptions and its sample and oracle complexity bounds are independent of the number of classes. Furthermore, we utilize our new boosting technique in two fundamental settings: multiclass PAC learning and List PAC learning, resulting in simplified algorithms compared to previous works.

Research Areas