Download presentation
Presentation is loading. Please wait.
Published byRudolf Strickland Modified over 9 years ago
1
Learning and Fourier Analysis Grigory Yaroslavtsev http://grigory.us CIS 625: Computational Learning Theory
2
Fourier Analysis and Learning
3
Boolean Functions
4
Fourier Expansion
5
Orthonormal Basis: Proof
6
Functions = Vectors, Inner Product
7
Fourier Coefficients
8
Parsevel’s Theorem
9
Plancharel’s Theorem
10
Basic Fourier Analysis
11
Convolution
12
Convolution: Proof of Property 3
13
Approximate Linearity
14
Property Testing [Goldreich, Goldwasser, Ron; Rubinfeld, Sudan] NO YES Randomized Algorithm YES NO Property Tester Don’t care
15
Linearity Testing Linear Non- linear Linearity Tester Don’t care
16
Linearity Testing [Blum, Luby, Rubinfeld]
17
Linearity Testing: Analysis
18
Linearity Testing: Analysis Continued
19
Local Correction
20
Thanks!
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.