TL;DR
This paper introduces comparative learning, a new framework combining realizable and agnostic PAC learning for two hypothesis classes, and characterizes its sample complexity using mutual VC and Littlestone dimensions.
Contribution
It defines mutual VC and Littlestone dimensions to analyze sample complexity in comparative learning, extending classic theory to two hypothesis classes and real-valued hypotheses.
Findings
Sample complexity characterized by mutual VC dimension (S,B)
Online regret characterized by mutual Littlestone dimension (S,B)
Applications to multiaccuracy and multicalibration, solving an open problem
Abstract
In many learning theory problems, a central role is played by a hypothesis class: we might assume that the data is labeled according to a hypothesis in the class (usually referred to as the realizable setting), or we might evaluate the learned model by comparing it with the best hypothesis in the class (the agnostic setting). Taking a step beyond these classic setups that involve only a single hypothesis class, we introduce comparative learning as a combination of the realizable and agnostic settings in PAC learning: given two binary hypothesis classes and , we assume that the data is labeled according to a hypothesis in the source class and require the learned model to achieve an accuracy comparable to the best hypothesis in the benchmark class . Even when both and have infinite VC dimensions, comparative learning can still have a small sample complexity. We…
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Videos
Comparative Learning: A Sample Complexity Theory for Two Hypothesis Classes· youtube
