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Improved Algorithms for Efficient Active Learning Halfspaces with Massart and Tsybakov noise

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 نشر من قبل Chicheng Zhang
 تاريخ النشر 2021
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We give a computationally-efficient PAC active learning algorithm for $d$-dimensional homogeneous halfspaces that can tolerate Massart noise (Massart and Nedelec, 2006) and Tsybakov noise (Tsybakov, 2004). Specialized to the $eta$-Massart noise setting, our algorithm achieves an information-theoretically near-optimal label complexity of $tilde{O}left( frac{d}{(1-2eta)^2} mathrm{polylog}(frac1epsilon) right)$ under a wide range of unlabeled data distributions (specifically, the family of structured distributions defined in Diakonikolas et al. (2020)). Under the more challenging Tsybakov noise condition, we identify two subfamilies of noise conditions, under which our efficient algorithm provides label complexity guarantees strictly lower than passive learning algorithms.


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