« Probably approximately correct learning » : différence entre les versions


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== Définition ==
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''' Probably approximately correct learning'''
 
In computational learning theory, probably approximately correct (PAC) learning is a framework for mathematical analysis of machine learning. It was proposed in 1984 by Leslie Valiant.[1]
 
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).
 
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[https://en.wikipedia.org/wiki/Probably_approximately_correct_learning Source : Wikipedia  Machine Learning ]
 
 
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Dernière version du 13 avril 2021 à 20:17

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