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Efficient noise-tolerant learning from statistical queries
1993
Proceedings of the twenty-fifth annual ACM symposium on Theory of computing - STOC '93
In this paper, we study the problem of learning in the presence of classification noise in the probabilistic learning model of Valiant and its variants. In order to identify the class of "robust" learning algorithms in the most general way, we formalize a new but related model of learning from statistical queries. Intuitively, in this model, a learning algorithm is forbidden to examine individual examples of the unknown target function, but is given access to an oracle providing estimates of
doi:10.1145/167088.167200
dblp:conf/stoc/Kearns93
fatcat:uuwup2mtyrclxblz64sbbiuliu