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1 Principal Components Shyh-Kang Jeng Department of Electrical Engineering/ Graduate Institute of Communication/ Graduate Institute of Networking and Multimedia.

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Presentation on theme: "1 Principal Components Shyh-Kang Jeng Department of Electrical Engineering/ Graduate Institute of Communication/ Graduate Institute of Networking and Multimedia."— Presentation transcript:

1 1 Principal Components Shyh-Kang Jeng Department of Electrical Engineering/ Graduate Institute of Communication/ Graduate Institute of Networking and Multimedia

2 2 Concept of Principal Components x1x1 x2x2

3 3 Principal Component Analysis Explain the variance-covariance structure of a set of variables through a few linear combinations of these variables Objectives –Data reduction –Interpretation Does not need normality assumption in general

4 4 Principal Components

5 5 Result 8.1

6 6 Proof of Result 8.1

7 7 Result 8.2

8 8 Proof of Result 8.2

9 9 Proportion of Total Variance due to the kth Principal Component

10 10 Result 8.3

11 11 Proof of Result 8.3

12 12 Example 8.1

13 13 Example 8.1

14 14 Example 8.1

15 15 Geometrical Interpretation

16 16 Geometric Interpretation

17 17 Standardized Variables

18 18 Result 8.4

19 19 Proportion of Total Variance due to the kth Principal Component

20 20 Example 8.2

21 21 Example 8.2

22 22 Principal Components for Diagonal Covariance Matrix

23 23 Principal Components for a Special Covariance Matrix

24 24 Principal Components for a Special Covariance Matrix

25 25 Sample Principal Components

26 26 Sample Principal Components

27 27 Example 8.3

28 28 Example 8.3

29 29 Scree Plot to Determine Number of Principal Components

30 30 Example 8.4: Pained Turtles

31 31 Example 8.4

32 32 Example 8.4: Scree Plot

33 33 Example 8.4: Principal Component One dominant principal component –Explains 96% of the total variance Interpretation

34 34 Geometric Interpretation

35 35 Standardized Variables

36 36 Principal Components

37 37 Proportion of Total Variance due to the kth Principal Component

38 38 Example 8.5: Stocks Data Weekly rates of return for five stocks –X 1 : Allied Chemical –X 2 : du Pont –X 3 : Union Carbide –X 4 : Exxon –X 5 : Texaco

39 39 Example 8.5

40 40 Example 8.5

41 41 Example 8.6 Body weight (in grams) for n =150 female mice were obtained after the birth of their first 4 litters

42 42 Example 8.6

43 43 Comment An unusually small value for the last eigenvalue from either the sample covariance or correlation matrix can indicate an unnoticed linear dependency of the data set One or more of the variables is redundant and should be deleted Example: x 4 = x 1 + x 2 + x 3

44 44 Check Normality and Suspect Observations Construct scatter diagram for pairs of the first few principal components Make Q-Q plots from the sample values generated by each principal component Construct scatter diagram and Q-Q plots for the last few principal components

45 45 Example 8.7: Turtle Data

46 46 Example 8.7

47 47 Large Sample Distribution for Eigenvalues and Eigenvectors

48 48 Confidence Interval for i

49 49 Approximate Distribution of Estimated Eigenvectors

50 50 Example 8.8

51 51 Testing for Equal Correlation

52 52 Example 8.9

53 53 Monitoring Stable Process: Part 1

54 54 Example 8.10 Police Department Data *First two sample cmponents explain 82% of the total variance

55 55 Example 8.10: Principal Components

56 56 Example 8.10: 95% Control Ellipse

57 57 Monitoring Stable Process: Part 2

58 58 Example 8.11 T 2 Chart for Unexplained Data

59 59 Example 8.12 Control Ellipse for Future Values *Example 8.10 data after dropping out-of-control case

60 60 Example 8.12 99% Prediction Ellipse

61 61 Avoiding Computation with Small Eigenvalues


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