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SAS 9.1 Decision Tree

SAS 9.1 Decision Tree. 데이터마이닝 방법론 강현철 외 자유아카데미 . 2006/03/01. Classification Tree. Classification Tree (Chapter3_1). Classification Tree: Input Data Source (HMEQ). Classification Tree: Input Data Source (BAD  Target). Classification Tree: Input Data Source (View Distribution).

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SAS 9.1 Decision Tree

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  1. SAS 9.1Decision Tree 데이터마이닝 방법론 강현철 외 자유아카데미. 2006/03/01

  2. Classification Tree

  3. Classification Tree (Chapter3_1)

  4. Classification Tree: Input Data Source (HMEQ)

  5. Classification Tree: Input Data Source (BAD  Target)

  6. Classification Tree: Input Data Source (View Distribution)

  7. Classification Tree: Input Data Source (Interval Variables)

  8. Classification Tree: Data Partition (70:30:0)

  9. Classification Tree: Assessment (Run)

  10. Classification Tree: Lift Chart (Tree > Reg, Neural)

  11. Classification Tree: Lift Chart (Tree > Reg, Neural)

  12. Classification Tree: Tree (Results) (0.1130 error rates for validation data)

  13. Classification Tree: Tree (View/Tree)

  14. Classification Tree: Tree (Results) (도구/색상정의)

  15. Classification Tree: Tree (Results)

  16. Classification Tree: Tree (View/Tree)

  17. Classification Tree: Tree (View/Tree) (Node 3: 1 – 63.7%)

  18. Classification Tree: Multiway Split

  19. Classification Tree: Multiway Split (Max. number of branches 4)

  20. Classification Tree: Multiway Split (View/Tree)

  21. Classification Tree: Multiway Split (Min. number of observations in leaf 25, Observation required for split 100)

  22. Classification Tree: Multiway Split (View/Tree)

  23. Regression Tree

  24. Regression Tree (Chapter3_2)

  25. Regression Tree: Input Data Source (WAGES)

  26. Regression Tree: Input Data Source (LNWAGE  Target)

  27. Regression Tree: Data Partition (70:30:0)

  28. Regression Tree: Insight (Data set)

  29. Regression Tree: Insight (Insight based on: Entire data set)

  30. Regression Tree: Insight (Run)

  31. Regression Tree: Insight (분석/분포, lnwage  Y)

  32. Regression Tree: Insight (분석/분포, 평균(1.875), 표준편차(0.545), 분산(0.297))

  33. Regression Tree: Tree

  34. Regression Tree: Tree (Results)

  35. Regression Tree: Tree (보기/통계량)

  36. Regression Tree: Tree (View/Tree)

  37. Interactive Learning

  38. Classification Tree (Chapter3_1)

  39. Interactive: Tree (Interactive …)

  40. Interactive: Tree Desktop Application

  41. Interactive: Split Node

  42. Interactive: Edit Rule…

  43. Interactive: Edit Rule…

  44. Interactive: Edit Rule…

  45. Interactive: First Split

  46. Interactive: Train

  47. Interactive: Train

  48. Variable Selection

  49. Classification Tree (Chapter3_1)

  50. Selection: Tree (Score, Data) (Training, Validation, and Test)

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