Learning from Data of Variable Quality

Crammer, Koby, Kearns, Michael, Wortman, Jennifer

Neural Information Processing Systems 

We initiate the study of learning from multiple sources of limited data, each of which may be corrupted at a different rate. We develop a complete theoryof which data sources should be used for two fundamental problems: estimating the bias of a coin, and learning a classifier in the presence of label noise. In both cases, efficient algorithms are provided for computing the optimal subset of data.

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