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PART I FUNDAMENTAL STATISTICAL CONCEPTS1 1.Statistics in Engineering and Science3 1.1.The Role of Statistics in Experimentation,5 1.2.Populations and Samples,9 1.3.Parameters and Statistics,19 1.4.Mathematical and Statistical Modeling,24 Exercises,28 2.Fundamentals of Statistical Inference33 2.1.Traditional Summary Statistics,33 2.2.Statistical Inference,39 2.3.Probability Concepts,42 2.4.Interval Estimation,48 2.5.Statistical Tolerance Intervals,50 2.6.Tests of Statistical Hypotheses,52 2.7.Sample Size and Power,56 Appendix: Probability Calculations,59 Exercises,64 3.Inferences on Means and Standard Deviations69 3.1.Inferences on a Population or Process Mean,72 3.1.1.Confidence Intervals,73 3.1.2.Hypothesis Tests,76 3.1.3.Choice of a Confidence Interval or a Test,78 3.1.4.Sample Size,79 3.2.Inferences on a Population or Process Standard Deviation,81 3.2.1.Confidence Intervals,82 3.2.2.Hypothesis Tests,84 3.3.Inferences on Two Populations or Processes Using Independent Pairs of Correlated Data Values,86 3.4.Inferences on Two Populations or Processes Using Data from Independent Samples,89 3.5.Comparing Standard Deviations from Several Populations,96 Exercises,99 PART II DESIGN AND ANALYSIS WITH FACTORIAL STRUCTURE107 4.Statistical Principles in Experimental Design109 4.1.Experimental-Design Terminology,110 4.2.Common Design Problems,115 4.2.1.Masking Factor Effects,115 4.2.2.Uncontrolled Factors,117 4.2.3.Erroneous Principles of Efficiency,119 4.2.4.One-Factor-at-a-Time Testing,121 4.3.Selecting a Statistical Design,124 4.3.1.Consideration of Objectives,125 4.3.2.Factor Effects,126 4.3.3.Precision and Efficiency,127 4.3.4.Randomization,128 4.4.Designing for Quality Improvement,128 Exercises,132 5.Factorial Experiments in Completely Randomized Designs140 5.1.Factorial Experiments,141 5.2.Interactions,146 5.3.Calculation of Factor Effects,152 5.4.Graphical Assessment of Factor Effects,158 Appendix: Calculation of Effects for Factors with More than Two Levels,160 Exercises,163 6.Analysis of Completely Randomized Designs170 6.1.Balanced Multifactor Experiments,171 6.1.1.Fixed Factor Effects,171 6.1.2.Analysis-of-Variance Models,173 6.1.3.Analysis-of-Variance Tables,176 6.2.Parameter Estimation,184 6.2.1.Estimation of the Error Standard Deviation,184 6.2.2.Estimation of Effects Parameters,186 6.2.3.Quantitative Factor Levels,189 6.3.Statistical Tests,194 6.3.1.Tests on Individual Parameters,194 6.3.2.F-Tests for Factor Effects,195 6.4.Multiple Comparisons,196 6.4.1.Philosophy of Mean-Comparison Procedures,196 6.4.2.General Comparisons of Means,203 6.4.3.Comparisons Based on t-Statistics,209 6.4.4.Tukey’s Significant Difference Procedure,212 6.5.Graphical Comparisons,213 Exercises,221 7.Fractional Factorial Experiments228 7.1.Confounding of Factor Effects,229 7.2.Design Resolution,237 7.3.Two-Level Fractional Factorial Experiments,239 7.3.1.Half Fractions,239 7.3.2.Quarter and Smaller Fractions,243 7.4.Three-Level Fractional Factorial Experiments,247 7.4.1.One-Third Fractions,248 7.4.2.Orthogonal Array Tables,252 7.5.Combined Two- and Three-Level Fractional Factorials,254 7.6.Sequential Experimentation,255 7.6.1.Screening Experiments,256 7.6.2.Designing a Sequence of Experiments,258 Appendix: Fractional Factorial Design Generators,260 Exercises,266 8.Analysis of Fractional Factorial Experiments271 8.1.A General Approach for the Analysis of Data from Unbalanced Experiments,272 8.2.Analysis of Marginal Means for Data from Unbalanced Designs,276 8.3.Analysis of Data from Two-Level, Fractional Factorial Experiments,278 8.4.Analysis of Data from Three-Level, Fractional Factorial Experiments,287 8.5.Analysis of Fractional Factorial Experiments with Combinations of Factors Having Two and Three Levels,290 8.6.Analysis of Screening Experiments,293 Exercises,299 PART III Design and Analysis with Random Effects309 9.Experiments in Randomized Block Designs311 9.1.Controlling Experimental Variability,312 9.2.Complete Block Designs,317 9.3.Incomplete Block Designs,318 9.3.1.Two-Level Factorial Experiments,318 9.3.2.Three-Level Factorial Experiments,323 9.3.3.Balanced Incomplete Block Designs,325 9.4.Latin-Square and Crossover Designs,328 9.4.1.Latin Square Designs,328 9.4.2.Crossover Designs,331 Appendix: Incomplete Block Design Generators,332 Exercises,342 10.Analysis of Designs with Random Factor Levels347 10.1.Random Factor Effects,348 10.2.Variance-Component Estimation,350 10.3.Analysis of Data from Block Designs,356 10.3.1.Complete Blocks,356 10.3.2.Incomplete Blocks,357 10.4.Latin-Square and Crossover Designs,364 Appendix: Determining Expected Mean Squares,366 Exercises,369 11.Nested Designs378 11.1.Crossed and Nested Factors,379 11.2.Hierarchically Nested Designs,381 11.3.Split-Plot Designs,384 11.3.1.An Illustrative Example,384 11.3.2.Classical Split-Plot Design Construction,386 11.4.Restricted Randomization,391 Exercises,395 12.Special Designs for Process Improvement400 12.1.Assessing Quality Performance,401 12.1.1.Gage Repeatability and Reproducibility,401 12.1.2.Process Capability,404 12.2.Statistical Designs for Process Improvement,406 12.2.1.Taguchi’s Robust Product Design Approach,406 12.2.2.An Integrated Approach,410 Appendix: Selected Orthogonal Arrays,414 Exercises,418 13.Analysis of Nested Designs and Designs for Process Improvement423 13.1.Hierarchically Nested Designs,423 13.2.Split-Plot Designs,428 13.3.Gage Repeatability and Reproducibility Designs,433 13.4.Signal-to-Noise Ratios,436 Exercises,440 PART IV Design and Analysis with Quantitative Predictors and Factors459 14.Linear Regression with One Predictor Variable461 14.1.Uses and Misuses of Regression,462 14.2.A Strategy for a Comprehensive Regression Analysis,470 14.3.Scatterplot Smoothing,473 14.4.Least-Squares Estimation,475 14.4.1.Intercept and Slope Estimates,476 14.4.2.Interpreting Least-Squares Estimates,478 14.4.3.No-Intercept Models,480 14.4.4.Model Assumptions,481 14.5.Inference,481 14.5.1.Analysis-of-Variance Table,481 14.5.2.Tests and Confidence Intervals,484 14.5.3.No-Intercept Models,485 14.5.4.Intervals for Responses,485 Exercises,487 15.Linear Regression with Several Predictor Variables496 15.1.Least Squares Estimation,497 15.1.1.Coefficient Estimates,497 15.1.2.Interpreting Least-Squares Estimates,499 15.2.Inference,503 15.2.1.Analysis of Variance,503 15.2.2.Lack of Fit,505 15.2.3.Tests on Parameters,508 15.2.4.Confidence Intervals,510 15.3.Interactions Among Quantitative Predictor Variables,511 15.4.Polynomial Model Fits,514 Appendix: Matrix Form of Least-Squares Estimators,522 Exercises,525 16.Linear Regression with Factors and Covariates as Predictors535 16.1.Recoding Categorical Predictors and Factors,536 16.1.1.Categorical Variables: Variables with Two Values,536 16.1.2.Categorical Variables: Variables with More Than Two Values,539 16.1.3.Interactions,541 16.2.Analysis of Covariance for Completely Randomized Designs,542 16.3.Analysis of Covariance for Randomized Complete Block Designs,552 Appendix: Calculation of Adjusted Factor Averages,556 Exercises,558 17.Designs and Analyses for Fitting Response Surfaces568 17.1.Uses of Response-Surface Methodology,569 17.2.Locating an Appropriate Experimental Region,575 17.3.Designs for Fitting Response Surfaces,580 17.3.1.Central Composite Design,582 17.3.2.Box–Behnken Design,585 17.3.3.Some Additional Designs,586 17.4.Fitting Response-Surface Models,588 17.4.1.Optimization,591 17.4.2.Optimization for Robust Parameter Product-Array Designs,594 17.4.3.Dual Response Analysis for Quality Improvement Designs,597 Appendix: Box–Behnken Design Plans; Locating Optimum Responses,600 Exercises,606 18.Model Assessment614 18.1.Outlier Detection,614 18.1.1.Univariate Techniques,615 18.1.2.Response-Variable Outliers,619 18.1.3.Predictor-Variable Outliers,626 18.2.Evaluating Model Assumptions,630 18.2.1.Normally Distributed Errors,630 18.2.2.Correct Variable Specification,634 18.2.3.Nonstochastic Predictor Variables,637 18.3.Model Respecification,639 18.3.1.Nonlinear-Response Functions,640 18.3.2.Power Reexpressions,642 Appendix: Calculation of Leverage Values and Outlier Diagnostics,647 Exercises,651 19.Variable Selection Techniques659 19.1.Comparing Fitted Models,660 19.2.All-Possible-Subset Comparisons,662 19.3.Stepwise Selection Methods,665 19.3.1.Forward Selection,666 19.3.2.Backward Elimination,668 19.3.3.Stepwise Iteration,670 19.4.Collinear Effects,672 Appendix: Cryogenic-Flowmeter Data,674 Exercises,678 APPENDIX: Statistical Tables689 1.Table of Random Numbers,690 2.Standard Normal Cumulative Probabilities,692 3.Student t Cumulative Probabilities,693 4.Chi-Square Cumulative Probabilities,694 5.F Cumulative Probabilities,695 6.Factors for Determining One-sided Tolerance Limits,701 7.Factors for Determining Two-sided Tolerance Limits,702 Sharing Widget |