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- Probably_approximately_correct_learning abstract "In computational learning theory, probably approximately correct learning (PAC learning) is a framework for mathematical analysis of machine learning. It was proposed in 1984 by Leslie Valiant.In this framework, the learner receives samples and must select a generalization function (called the hypothesis) from a certain class of possible functions. The goal is that, with high probability (the "probably" part), the selected function will have low generalization error (the "approximately correct" part). The learner must be able to learn the concept given any arbitrary approximation ratio, probability of success, or distribution of the samples. The model was later extended to treat noise (misclassified samples).An important innovation of the PAC framework is the introduction of computational complexity theory concepts to machine learning. In particular, the learner is expected to find efficient functions (time and space requirements bounded to a polynomial of the example size), and the learner itself must implement an efficient procedure (requiring an example count bounded to a polynomial of the concept size, modified by the approximation and likelihood bounds).".
- Probably_approximately_correct_learning wikiPageExternalLink pac.pdf.
- Probably_approximately_correct_learning wikiPageExternalLink www.probablyapproximatelycorrect.com.
- Probably_approximately_correct_learning wikiPageID "380008".
- Probably_approximately_correct_learning wikiPageRevisionID "601228074".
- Probably_approximately_correct_learning hasPhotoCollection Probably_approximately_correct_learning.
- Probably_approximately_correct_learning subject Category:Computational_learning_theory.
- Probably_approximately_correct_learning comment "In computational learning theory, probably approximately correct learning (PAC learning) is a framework for mathematical analysis of machine learning. It was proposed in 1984 by Leslie Valiant.In this framework, the learner receives samples and must select a generalization function (called the hypothesis) from a certain class of possible functions.".
- Probably_approximately_correct_learning label "Apprentissage PAC".
- Probably_approximately_correct_learning label "Probably Approximately Correct Learning".
- Probably_approximately_correct_learning label "Probably approximately correct learning".
- Probably_approximately_correct_learning sameAs Probably_Approximately_Correct_Learning.
- Probably_approximately_correct_learning sameAs Apprentissage_PAC.
- Probably_approximately_correct_learning sameAs m.021gkn.
- Probably_approximately_correct_learning sameAs Q458526.
- Probably_approximately_correct_learning sameAs Q458526.
- Probably_approximately_correct_learning wasDerivedFrom Probably_approximately_correct_learning?oldid=601228074.
- Probably_approximately_correct_learning isPrimaryTopicOf Probably_approximately_correct_learning.