AI RESEARCH
Label Noise Cleaning for Supervised Classification via Bernoulli Random Sampling
arXiv CS.LG
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ArXi:2603.14387v1 Announce Type: cross Label noise - incorrect labels assigned to observations - can substantially degrade the performance of supervised classifiers. This paper proposes a label noise cleaning method based on Bernoulli random sampling. We show that the mean label noise levels of subsets generated by Bernoulli random sampling containing a given observation are identically distributed for all clean observations, and identically distributed, with a different distribution, for all noisy observations. Although the mean label noise levels are not independent across observations, by.