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1 Statistical Tools for Multivariate Six Sigma Dr. Neil W. Polhemus CTO & Director of Development StatPoint, Inc.

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Presentation on theme: "1 Statistical Tools for Multivariate Six Sigma Dr. Neil W. Polhemus CTO & Director of Development StatPoint, Inc."— Presentation transcript:

1 1 Statistical Tools for Multivariate Six Sigma Dr. Neil W. Polhemus CTO & Director of Development StatPoint, Inc.

2 2 The Challenge The quality of an item or service usually depends on more than one characteristic. When the characteristics are not independent, considering each characteristic separately can give a misleading estimate of overall performance.

3 3 The Solution Proper analysis of data from such processes requires the use of multivariate statistical techniques.

4 4 Outline  Multivariate SPC Multivariate control charts Multivariate capability analysis  Data exploration and modeling Principal components analysis (PCA) Partial least squares (PLS) Neural network classifiers  Design of experiments (DOE) Multivariate optimization

5 5 Example #1 Textile fiber Characteristic #1: tensile strength - 115 ± 1 Characteristic #2: diameter - 1.05 ± 0.05

6 6 Sample Data n = 100

7 7 Individuals Chart - strength

8 8 Individuals Chart - diameter

9 9 Capability Analysis - strength

10 10 Capability Analysis - diameter

11 11 Scatterplot

12 12 Multivariate Normal Distribution

13 13 Control Ellipse

14 14 Multivariate Capability Determines joint probability of being within the specification limits on all characteristics

15 15 Multivariate Capability

16 16 Capability Ellipse

17 17 Mult. Capability Indices Defined to give the same DPM as in the univariate case.

18 18 Test for Normality

19 19 More than 2 Characteristics Calculate T-squared: where S = sample covariance matrix = vector of sample means

20 20 T-Squared Chart

21 21 T-Squared Decomposition Subtracts the value of T-squared if each variable is removed. Large values indicate that a variable has an important contribution.

22 22 Control Ellipsoid

23 23 Multivariate EWMA Chart

24 24 Generalized Variance Chart Plots the determinant of the variance-covariance matrix for data that is sampled in subgroups.

25 25 Data Exploration and Modeling When the number of variables is large, the dimensionality of the problem often makes it difficult to determine the underlying relationships. Reduction of dimensionality can be very helpful.

26 26 Example #2

27 27 Matrix Plot

28 28 Analysis Methods  Predicting certain characteristics based on others (regression and ANOVA)  Separating items into groups (classification)  Detecting unusual items

29 29 Multiple Regression

30 30 Principal Components The goal of a principal components analysis (PCA) is to construct k linear combinations of the p variables X that contain the greatest variance.

31 31 Scree Plot Shows the number of significant components.

32 32 Percentage Explained

33 33 Components

34 34 Interpretation

35 35 Principal Component Regression

36 36 Partial Least Squares (PLS) Similar to PCA, except that it finds components that minimize the variance in both the X’s and the Y’s. May be used with many X variables, even exceeding n.

37 37 Component Extraction Starts with number of components equal to the minimum of p and (n-1).

38 38 Coefficient Plot

39 39 Model in Original Units

40 40 Classification Principal components can also be used to classify new observations. A useful method for classification is a Bayesian classifier, which can be expressed as a neural network.

41 41 6 Types of Automobiles

42 42 Neural Networks

43 43 Bayesian Classifier  Begins with prior probabilities for membership in each group  Uses a Parzen-like density estimator of the density function for each group

44 44 Options  The prior probabilities may be determined in several ways.  A training set is usually used to find a good value for .

45 45 Output

46 46 Classification Regions

47 47 Changing Sigma

48 48 Overlay Plot

49 49 Outlier Detection

50 50 Cluster Analysis

51 51 Design of Experiments When more than one characteristic is important, finding the optimal operating conditions usually requires a tradeoff of one characteristic for another. One approach to finding a single solution is to use desirability functions.

52 52 Example #3 Myers and Montgomery (2002) describe an experiment on a chemical process: Response variableGoal Conversion percentagemaximize Thermal activityMaintain between 55 and 60 Input factorLowHigh time8 minutes17 minutes temperature160˚ C210˚ C catalyst1.5%3.5%

53 53 Experiment

54 54 Step #1: Model Conversion

55 55 Step #2: Optimize Conversion

56 56 Step #3: Model Activity

57 57 Step #4: Optimize Activity

58 58 Step #5: Select Desirability Fcns. Maximize

59 59 Desirability Function Hit Target

60 60 Combined Desirability where m = # of factors and 0 ≤ I j ≤ 5. D ranges from 0 to 1.

61 61 Example

62 62 Desirability Contours

63 63 Desirability Surface

64 64 Overlaid Contours

65 65 References  Johnson, R.A. and Wichern, D.W. (2002). Applied Multivariate Statistical Analysis. Upper Saddle River: Prentice Hall.Mason, R.L. and Young, J.C. (2002).  Mason and Young (2002). Multivariate Statistical Process Control with Industrial Applications. Philadelphia: SIAM.  Montgomery, D. C. (2005). Introduction to Statistical Quality Control, 5th edition. New York: John Wiley and Sons.  Myers, R. H. and Montgomery, D. C. (2002). Response Surface Methodology: Process and Product optimization Using Designed Experiments, 2nd edition. New York: John Wiley and Sons.

66 66 PowerPoint Slides Available at: www.statgraphics.com/documents.htm


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