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ALT
1998
Springer

PAC Learning from Positive Statistical Queries

13 years 8 months ago
PAC Learning from Positive Statistical Queries
Learning from positive examples occurs very frequently in natural learning. The PAC learning model of Valiant takes many features of natural learning into account, but in most cases it fails to describe such kind of learning. We show that in order to make the learning from positive data possible, extra-information about the underlying distribution must be provided to the learner. We de ne a PAC learning model from positive and unlabeled examples. We also de ne a PAC learning model from positive and unlabeled statistical queries. Relations with PAC model ( Val84]), statistical query model ( Kea93]) and constantpartition classi cation noise model ( Dec97]) are studied. We show that k-DNF and k-decision lists are learnable in both models, i.e. with far less information than it is assumed in previously used algorithms.
François Denis
Added 05 Aug 2010
Updated 05 Aug 2010
Type Conference
Year 1998
Where ALT
Authors François Denis
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