ICML2022
ActiveHedge: Hedge meets Active Learning
Bhuvesh Kumar, Jacob D. Abernethy, Venkatesh Saligrama
被引用 2 次
摘要
We consider the classical problem of multiclass prediction with expert advice, but with an active learning twist. In this new setting the learner will only query the labels of a small number of examples, but still aims to minimize regret to the best expert as usual; the learner is also allowed a very short burn-in phase where it can fast-forward and query certain highly-informative examples. We design an algorithm that utilizes Hedge (aka Exponential Weights) as a subroutine, and we show that under a very particular combinatorial constraint on the matrix of expert predictions we can obtain a very strong regret guarantee while querying very few labels. This constraint, which we refer to as ζ-compactness, or just compactness, can be viewed as a non-stochastic variant of the disagreement coefficient, another popular parameter used to reason about the sample complexity of active learning in the IID setting. We also give a polynomial time algorithm to calculate the ζcompactness of a matrix up to an approximation factor of 3.