Publication | Open Access
The Optimal Sample Complexity of PAC Learning
57
Citations
15
References
2015
Year
Mathematical ProgrammingComputational Complexity TheoryEngineeringPac LearningMachine LearningNew Upper BoundHans SimonComputational Learning TheoryAlgorithmic LearningLower BoundComputational ComplexityComputer ScienceAlgorithmic Information Theory
This work establishes a new upper bound on the number of samples sufficient for PAC learning in the realizable case. The bound matches known lower bounds up to numerical constant factors. This solves a long-standing open problem on the sample complexity of PAC learning. The technique and analysis build on a recent breakthrough by Hans Simon.
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