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Learning Noisy Halfspaces with a Margin: Massart is No Harder than Random

20 January 2025
Gautam Chandrasekaran
Vasilis Kontonis
Konstantinos Stavropoulos
Kevin Tian
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Abstract

We study the problem of PAC learning γ\gammaγ-margin halfspaces with Massart noise. We propose a simple proper learning algorithm, the Perspectron, that has sample complexity O~((ϵγ)−2)\widetilde{O}((\epsilon\gamma)^{-2})O((ϵγ)−2) and achieves classification error at most η+ϵ\eta+\epsilonη+ϵ where η\etaη is the Massart noise rate. Prior works [DGT19,CKMY20] came with worse sample complexity guarantees (in both ϵ\epsilonϵ and γ\gammaγ) or could only handle random classification noise [DDK+23,KIT+23] -- a much milder noise assumption. We also show that our results extend to the more challenging setting of learning generalized linear models with a known link function under Massart noise, achieving a similar sample complexity to the halfspace case. This significantly improves upon the prior state-of-the-art in this setting due to [CKMY20], who introduced this model.

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