Multiclass Learnability Beyond the PAC Framework: Universal Rates and Partial Concept Classes
–Neural Information Processing Systems
In this paper we study the problem of multiclass classification with a bounded number of different labels k, in the realizable setting. We extend the traditional PAC model to a) distribution-dependent learning rates, and b) learning rates under data-dependent assumptions. First, we consider the universal learning setting (Bousquet, Hanneke, Moran, van Handel and Yehudayoff, STOC'21), for which we provide a complete characterization of the achievable learning rates that holds for every fixed distribution. In particular, we show the following trichotomy: for any concept class, the optimal learning rate is either exponential, linear or arbitrarily slow. Additionally, we provide complexity measures of the underlying hypothesis class that characterize when these rates occur.
Neural Information Processing Systems
Jan-16-2025, 12:57:15 GMT
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