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Dimension Reduction Based on
the Geometry of Dually Flat Spaces
•                 2002.04 – 2006.03




•                   2006.04 – 2012.03




    24   5   28                         2
1.
 2.
 3.
 4.
 5.


24   5   28   3
1.
 2.
 3.
 4.
 5.


24   5   28   4
•

     ¾
     –
     –
     –

9
     –
    24   5   28   5
•
     ¾
     –
     –
•
     ¾
     –


    24   5   28   6
‡

     –
•
     –
     –


    →
    24   5   28   7
‡
    ¾
    –          ridge   LASSO

• LASSO L1
    –
• LARS (Least Angle Regression)
    –
    – LASSO
 24   5   28                      8
LARS
• LARS (Least Angle Regression)
  – Efron, Hastie, Johnstone and Tibshirani: Least Angle
    Regression (with discussion). Annals of Statistics,
    vol. 32 (2004), pp. 407-499.
  –
  –
  –
  –
  9
  9
  ‹                  LASSO

 24   5   28                                               9
24   5   28   10
24   5   28   11
24   5   28   12
.
              →   ≥
     .




24   5   28           13
LARS
                     [Efron, et al. (2004)]




24   5   28                             14
LASSO
                      [Efron, et al. (2004)]




24   5   28                              15
Stagewise
                          [Efron, et al. (2004)]




24   5   28                                  16
LARS




24   5   28   17
‡
     –
     –
     –

•
     –
     –


    24   5   28   18
•
•
•
         – e-     m-
• e-                   e-
         –
• m-                   m-
         –
    24   5   28             19
24   5   28   20
24   5   28   21
• LARS
  –
•
• LARS LASSO
  –

               LARS LASSO



 24   5   28                22
1.
 2.
 3.
 4.
 5.


24   5   28   23
• Bisector Regression
                             Least Angle Regression

•                            BRGLM
         – Bisector Regression for Generalized Linear Models
•                                           BRGGM
         – Bisector Regression for Gaussian Graphical Models
•                 BRCT ←
         – Bisector Regression for Contingency Tables

    24   5   28                                            24
24   5   28   25
24   5   28   26
.
              →   ≥
     .




24   5   28           27
•




    24   5   28   28
•
•




    24   5   28   29
•




•
     –
     –


    24   5   28   30
1.
 2.
 3.
 4.
 5.


24   5   28   31
„




•
• Bisector regression



    24   5   28         32
•




    24   5   28   33
•                 e-




•                      m-




    24   5   28             34
•                   covariance matrix

                  ⊧ ∽ ∨⊾≩≪ ∩        ∨⊧∩≩≪ ∽ ⊾≩≪
• Concentration matrix

                  ⊧ ⊡∱ ∽ ∨⊾ ≩≪ ∩   ⊡⊧⊡∱⊢≩≪ ∽ ⊾≩≪

    24   5   28                                    35
•
•




    24   5   28   36
e-




m-




24   5   28   37
Kullback-Leibler
•
• Kullback-Leibler
  –




 24   5   28         38
m-
              e-        m-




                             m-




24   5   28                       39
Bisector Regression
•

     –
     –

1.
2.
3.

24   5   28                     40
Bisector Regression   GGM
1.


2.


3.



 24   5   28                 41
24   5   28   42
24   5   28   43
•

•

     –




24   5   28   44
• GGM                       ≢
                           ⊧ ≩≪
                        ⊩ ⊡∱                   :
                                                ⊪
               ≍ ∨⊤∩ ∽ ⊧ ≪ ⊾ ∽ ∰ ∨∨≩∻ ≪ ∩ ∶∲ ⊤∩
                  ≢ ≢
                 ∨⊧∩≩≪ ∽ ∨⊧≍≌≅∩≩≪      ∨ ≩∻ ≪ ∩ ∲ ⊤
                  ≢
                 ∨⊧⊡∱∩≩≪ ∽ ∰           ∨≩∻ ≪ ∩ ∶∲ ⊤
          ≢
          ⊧≍≌≅
 24   5   28                                          45
BRGGM




24   5   28           46
Bisector Regression
•
     –
     –
     –


•
     –


24   5   28                47
Bisector Regression
•
     –
• LASSO




    24   5   28                48
LARS
• LARS
• BR

 →




 24   5   28          49
LARS




24   5   28   50
BRGGM




24   5   28      51
24   5   28   52
24   5   28   53
1.
 2.
 3.
 4.
 5.


24   5   28   54
•
• South Africa Heart Disease (SAHD) dataset
• R ElemStatLearn
•

     –
•

24   5   28                                   55
BRGLM   Park and Hastie (2007)


24   5   28                                    56
GLM
•
• Training, Test
  –                  100 10
• AIC
• 1000
                       BRGLM      Park and
                                 Hastie(2007)
                        0.30        0.30
                       (0.050)     (0.054)

 24   5   28                                    57
•

•
• R           SIN package




    24   5   28             58
1
2                     5




    3            4
                                                          1
                                                      2            5




                                                      3        4
                 1:       , 2:   , 3:   , 4:   , 5:

        24   5   28                                           59
LASSOLin (2007)]
                                                 [Yuan and
             1
2                     5




    3            4
                                                            1
                                                      2              5




                                                       3         4
                 1:       , 2:   , 3:   , 4:   , 5:

        24   5   28                                             60
• BRGGM         graphical LASSO     [Friedman, et al. (2007)]

  – Graphical LASSO    R   glasso
• 1000 trials
  – Training, test: 1000 observations
• AIC
•



 24   5   28                                                    61
≭≯≤≥≬ ≶≡≲≩≡≢≬≥   ≥≤≧≥     ≂≒≇≇≍         ≧≲≡≰≨≩≣≡≬ ≌≁≓≓≏
  ∨≩∩    ∵        ∳     ∱∮∰∱∱ ∨∰∮∰∲∳∩     ∱∮∰∶∵ ∨∰∮∰∲∴∩
 ∨≩≩∩    ∵        ∴     ∱∮∰∱∴ ∨∰∮∰∲∳∩     ∱∮∰∶∸ ∨∰∮∰∲∴∩
 ∨≩≩≩∩ ∶          ∷     ∱∮∲∲∸ ∨∰∮∰∲∶∩     ∱∮∲∹∱ ∨∰∮∰∲∷∩
 ∨≩≶∩ ∷           ∱∰    ∱∮∴∴∰ ∨∰∮∰∲∷∩     ∱∮∵∱∵ ∨∰∮∰∲∹∩


24   5   28                                           62
• BRGGM
  –
• 100 trials
  – 100 observations
               ≤ ≡ ≴≡≳≥≴ ≶≡ ≲≩≡≢ ≬≥   ≥≤ ≧ ≥ ≴≲≵ ≥ ≭ ≯ ≤ ≥≬
                  ∨≡∩        ∴          ∳ ∱∰∰∯∱∰∰
                  ∨≢ ∩       ∵          ∵ ∹∹∯∱∰∰
                  ∨≣∩        ∶          ∸ ∹∹∯∱∰∰
                  ∨≤ ∩       ∱∰        ∲∲ ∱∲∯∱∰∰
 24   5   28                                                  63
1.
 2.
 3.
 4.
 5.


24   5   28   64
•

     –
•
     –
•
¾
¾
    24   5   28   65
24   5   28   66

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jokyo20120528

  • 1. Dimension Reduction Based on the Geometry of Dually Flat Spaces
  • 2. 2002.04 – 2006.03 • 2006.04 – 2012.03 24 5 28 2
  • 3. 1. 2. 3. 4. 5. 24 5 28 3
  • 4. 1. 2. 3. 4. 5. 24 5 28 4
  • 5. ¾ – – – 9 – 24 5 28 5
  • 6. ¾ – – • ¾ – 24 5 28 6
  • 7. – • – – → 24 5 28 7
  • 8. ¾ – ridge LASSO • LASSO L1 – • LARS (Least Angle Regression) – – LASSO 24 5 28 8
  • 9. LARS • LARS (Least Angle Regression) – Efron, Hastie, Johnstone and Tibshirani: Least Angle Regression (with discussion). Annals of Statistics, vol. 32 (2004), pp. 407-499. – – – – 9 9 ‹ LASSO 24 5 28 9
  • 10. 24 5 28 10
  • 11. 24 5 28 11
  • 12. 24 5 28 12
  • 13. . → ≥ . 24 5 28 13
  • 14. LARS [Efron, et al. (2004)] 24 5 28 14
  • 15. LASSO [Efron, et al. (2004)] 24 5 28 15
  • 16. Stagewise [Efron, et al. (2004)] 24 5 28 16
  • 17. LARS 24 5 28 17
  • 18. – – – • – – 24 5 28 18
  • 19. • • • – e- m- • e- e- – • m- m- – 24 5 28 19
  • 20. 24 5 28 20
  • 21. 24 5 28 21
  • 22. • LARS – • • LARS LASSO – LARS LASSO 24 5 28 22
  • 23. 1. 2. 3. 4. 5. 24 5 28 23
  • 24. • Bisector Regression Least Angle Regression • BRGLM – Bisector Regression for Generalized Linear Models • BRGGM – Bisector Regression for Gaussian Graphical Models • BRCT ← – Bisector Regression for Contingency Tables 24 5 28 24
  • 25. 24 5 28 25
  • 26. 24 5 28 26
  • 27. . → ≥ . 24 5 28 27
  • 28. 24 5 28 28
  • 29. • • 24 5 28 29
  • 30. • • – – 24 5 28 30
  • 31. 1. 2. 3. 4. 5. 24 5 28 31
  • 33. 24 5 28 33
  • 34. e- • m- 24 5 28 34
  • 35. covariance matrix ⊧ ∽ ∨⊾≩≪ ∩ ∨⊧∩≩≪ ∽ ⊾≩≪ • Concentration matrix ⊧ ⊡∱ ∽ ∨⊾ ≩≪ ∩ ⊡⊧⊡∱⊢≩≪ ∽ ⊾≩≪ 24 5 28 35
  • 36. • • 24 5 28 36
  • 37. e- m- 24 5 28 37
  • 39. m- e- m- m- 24 5 28 39
  • 40. Bisector Regression • – – 1. 2. 3. 24 5 28 40
  • 41. Bisector Regression GGM 1. 2. 3. 24 5 28 41
  • 42. 24 5 28 42
  • 43. 24 5 28 43
  • 44. • • – 24 5 28 44
  • 45. • GGM ≢ ⊧ ≩≪ ⊩ ⊡∱ : ⊪ ≍ ∨⊤∩ ∽ ⊧ ≪ ⊾ ∽ ∰ ∨∨≩∻ ≪ ∩ ∶∲ ⊤∩ ≢ ≢ ∨⊧∩≩≪ ∽ ∨⊧≍≌≅∩≩≪ ∨ ≩∻ ≪ ∩ ∲ ⊤ ≢ ∨⊧⊡∱∩≩≪ ∽ ∰ ∨≩∻ ≪ ∩ ∶∲ ⊤ ≢ ⊧≍≌≅ 24 5 28 45
  • 46. BRGGM 24 5 28 46
  • 47. Bisector Regression • – – – • – 24 5 28 47
  • 48. Bisector Regression • – • LASSO 24 5 28 48
  • 49. LARS • LARS • BR → 24 5 28 49
  • 50. LARS 24 5 28 50
  • 51. BRGGM 24 5 28 51
  • 52. 24 5 28 52
  • 53. 24 5 28 53
  • 54. 1. 2. 3. 4. 5. 24 5 28 54
  • 55. • • South Africa Heart Disease (SAHD) dataset • R ElemStatLearn • – • 24 5 28 55
  • 56. BRGLM Park and Hastie (2007) 24 5 28 56
  • 57. GLM • • Training, Test – 100 10 • AIC • 1000 BRGLM Park and Hastie(2007) 0.30 0.30 (0.050) (0.054) 24 5 28 57
  • 58. • • • R SIN package 24 5 28 58
  • 59. 1 2 5 3 4 1 2 5 3 4 1: , 2: , 3: , 4: , 5: 24 5 28 59
  • 60. LASSOLin (2007)] [Yuan and 1 2 5 3 4 1 2 5 3 4 1: , 2: , 3: , 4: , 5: 24 5 28 60
  • 61. • BRGGM graphical LASSO [Friedman, et al. (2007)] – Graphical LASSO R glasso • 1000 trials – Training, test: 1000 observations • AIC • 24 5 28 61
  • 62. ≭≯≤≥≬ ≶≡≲≩≡≢≬≥ ≥≤≧≥ ≂≒≇≇≍ ≧≲≡≰≨≩≣≡≬ ≌≁≓≓≏ ∨≩∩ ∵ ∳ ∱∮∰∱∱ ∨∰∮∰∲∳∩ ∱∮∰∶∵ ∨∰∮∰∲∴∩ ∨≩≩∩ ∵ ∴ ∱∮∰∱∴ ∨∰∮∰∲∳∩ ∱∮∰∶∸ ∨∰∮∰∲∴∩ ∨≩≩≩∩ ∶ ∷ ∱∮∲∲∸ ∨∰∮∰∲∶∩ ∱∮∲∹∱ ∨∰∮∰∲∷∩ ∨≩≶∩ ∷ ∱∰ ∱∮∴∴∰ ∨∰∮∰∲∷∩ ∱∮∵∱∵ ∨∰∮∰∲∹∩ 24 5 28 62
  • 63. • BRGGM – • 100 trials – 100 observations ≤ ≡ ≴≡≳≥≴ ≶≡ ≲≩≡≢ ≬≥ ≥≤ ≧ ≥ ≴≲≵ ≥ ≭ ≯ ≤ ≥≬ ∨≡∩ ∴ ∳ ∱∰∰∯∱∰∰ ∨≢ ∩ ∵ ∵ ∹∹∯∱∰∰ ∨≣∩ ∶ ∸ ∹∹∯∱∰∰ ∨≤ ∩ ∱∰ ∲∲ ∱∲∯∱∰∰ 24 5 28 63
  • 64. 1. 2. 3. 4. 5. 24 5 28 64
  • 65. – • – • ¾ ¾ 24 5 28 65
  • 66. 24 5 28 66