JMP output. Circuit Design Noise 1 19 1 20 1 19 1 30 1 8 2 80 2 61 2 73 2 56 2 80 3 47 3 26 3 25 3 35 3 50 4 95 4 46 4 83 4 78 4 97.

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Presentation transcript:

JMP output

Circuit Design Noise

 Oneway Anova  Summary of Fit   Rsquare  Adj Rsquare  Root Mean Square Error  Mean of Response51.4  Observations (or Sum Wgts)20  Analysis of Variance  SourceDFSum of SquaresMean SquareF RatioProb > F  Circuit Design <.0001*  Error  C. Total  Means for Oneway Anova  LevelNumberMeanStd ErrorLower 95%Upper 95%      Std Error uses a pooled estimate of error variance

 Level Mean  4A  2A  3 B  1 B  Levels not connected by same letter are significantly different.

 Comparisons for each pair using Student's t  tAlpha   Abs(Dif)-LSD 4231      Positive values show pairs of means that are significantly different.  LevelMean  4A  2A  3 B  1 B  Levels not connected by same letter are significantly different.  Level - LevelDifferenceStd Err DifLower CLUpper CLp-ValueDifference  <.0001*  <.0001*  *  *  

 Level Mean  4A  2A  3 B  1 B  Levels not connected by same letter are significantly different.

 Comparisons for all pairs using Tukey-Kramer HSD  q*Alpha   Abs(Dif)-HSD 4231      Positive values show pairs of means that are significantly different.  LevelMean  4A  2A  3 B  1 B  Levels not connected by same letter are significantly different.  Level - LevelDifferenceStd Err DifLower CLUpper CLp-ValueDifference  <.0001*  *  *  *  

 Parameter Estimates  TypeParameterEstimateLower 95%Upper 95%  Location μ 5.329e  Dispersion σ  -2log(Likelihood) =  Goodness-of-Fit Test  Shapiro-Wilk W Test  W Prob<W   Note: Ho = The data is from the Normal distribution. Small p-values reject Ho.

 LevelCountStd DevMeanAbsDif to Mean MeanAbsDif to Median      TestF RatioDFNumDFDenProb > F  O'Brien[.5]  Brown-Forsythe  Levene *  Bartlett