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arxiv 1909.09136 v1 pith:75IO7MMB submitted 2019-09-18 cs.LG stat.ML

Towards a New Understanding of the Training of Neural Networks with Mislabeled Training Data

classification cs.LG stat.ML
keywords modeltrainingmislabeleddatanoisyapproachbetterclassifier
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We investigate the problem of machine learning with mislabeled training data. We try to make the effects of mislabeled training better understood through analysis of the basic model and equations that characterize the problem. This includes results about the ability of the noisy model to make the same decisions as the clean model and the effects of noise on model performance. In addition to providing better insights we also are able to show that the Maximum Likelihood (ML) estimate of the parameters of the noisy model determine those of the clean model. This property is obtained through the use of the ML invariance property and leads to an approach to developing a classifier when training has been mislabeled: namely train the classifier on noisy data and adjust the decision threshold based on the noise levels and/or class priors. We show how our approach to mislabeled training works with multi-layered perceptrons (MLPs).

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