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Integral transforms / Functional analysis / Computational learning theory / Probably approximately correct learning / Fourier transform / Distribution / Fourier inversion theorem / Dirac delta function / Mathematical analysis / Fourier analysis / Generalized functions
Date: 2003-08-12 04:28:59
Integral transforms
Functional analysis
Computational learning theory
Probably approximately correct learning
Fourier transform
Distribution
Fourier inversion theorem
Dirac delta function
Mathematical analysis
Fourier analysis
Generalized functions

Uniform-Distribution Attribute Noise Learnability Jeffrey C. Jackson∗ Duquesne University

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