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Testing the Manifold Hypothesis Hari Narayanan University of Washington In collaboration with Charles Fefferman and Sanjoy Mitter Princeton MIT.

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Presentation on theme: "Testing the Manifold Hypothesis Hari Narayanan University of Washington In collaboration with Charles Fefferman and Sanjoy Mitter Princeton MIT."— Presentation transcript:

1 Testing the Manifold Hypothesis Hari Narayanan University of Washington In collaboration with Charles Fefferman and Sanjoy Mitter Princeton MIT

2 Manifold learning and manifold hypothesis [Kambhatla-Leen’93, Tannenbaum et al’00, Roweis-Saul’00, Belkin-Niyogi’03, Donoho-Grimes’04]

3 When is the Manifold Hypothesis true?

4 Reach of a submanifold of R n Large reach Small reach reach

5 Low dimensional manifolds with bounded volume and reach

6 Testing the Manifold Hypothesis

7 Sample Complexity of testing the manifold hypothesis [

8 Algorithmic question

9 Sample complexity of testing the Manifold Hypothesis

10 Empirical Risk Minimization

11 Fitting manifolds TexPoint Display

12 Reduction to k-means

13 Proving a Uniform bound for k-means

14 Fat-shattering dimension

15 Bound on sample complexity

16 VC dimension

17

18 Random projection

19

20 Bound on sample complexity

21 Fitting manifolds

22 Algorithmic question

23

24 Outline

25

26

27 (3) Generating a smooth vector bundle

28

29 Outline

30 (4) Generating a putative manifold

31

32

33

34 Outline

35 (5) Bundle map

36

37 Outline

38

39 Concluding Remarks An algorithm for testing the manifold hypothesis. Future directions: (a)Make practical and test on real data (b)Improve precision in the reach – get rid of controlled constants depending on d. (c)Better algorithms under distributional assumptions

40 Thank You!


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