GitHub topics: t-revision
alejandrods/Analysis-of-classifiers-robust-to-noisy-labels
Analysis of robust classification algorithms for overcoming class-dependant labelling noise: Forward, Importance Reweighting and T-revision. We demonstrate methods for estimating the transition matrix in order to obtain better classifier performance when working with noisy data.
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