AI RESEARCH
Efficient and Noise-Tolerant PAC Learning of Multiclass Linear Classifiers
arXiv CS.LG
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ArXi:2605.18662v1 Announce Type: new Noise-tolerant PAC learning of linear models has been of central interests in machine learning community since the last century. In recent years, many computationally-efficient algorithms have been proposed for the problem of learning linear threshold functions under multiple noise models. Yet, when the problem is considered under multiclass learning settings, i.e. when the number of classes $k$ is at least $3$, it is unknown whether there exist computationally-efficient PAC learning algorithms when the data sets are maliciously corrupted.