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ویرایش: 5
نویسندگان: David J. Sheskin
سری:
ISBN (شابک) : 9781439858011, 1439858012
ناشر: Chapman and Hall/CRC
سال نشر: 2011
تعداد صفحات: 1927
زبان: English
فرمت فایل : PDF (درصورت درخواست کاربر به PDF، EPUB یا AZW3 تبدیل می شود)
حجم فایل: 62 مگابایت
در صورت تبدیل فایل کتاب Handbook of Parametric and Nonparametric Statistical Procedures, Fifth Edition به فرمت های PDF، EPUB، AZW3، MOBI و یا DJVU می توانید به پشتیبان اطلاع دهید تا فایل مورد نظر را تبدیل نمایند.
توجه داشته باشید کتاب کتاب روشهای آماری پارامتریک و ناپارامتریک، ویرایش پنجم نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.
به تبعیت از پیشینیان پرفروش خود، راهنمای Prآماری پارامتریک و ناپارامتریک، ویرایش پنجم در اختیار محققان و معلمان قرار میدهد. و دانشآموزان دارای مرجع فراگیر در روشهای آماری تک متغیره، دو متغیره و چند متغیره.
جدید در ویرایش پنجم:
در دامنه وسیعی، راهنما برای افرادی در نظر گرفته شده است که در طیف گسترده ای از رشته های دانشگاهی شامل زمینه های ریاضی، اجتماعی، زیستی درگیر هستند. و علوم محیطی، تجارت و آموزش. این کتاب مرجعی برای افراد دارای مهارت های آماری است، همچنین برای کسانی که فاقد پیشینه نظری یا ریاضی لازم برای درک موضوعی هستند که معمولاً در کتاب های مرجع آمار مستند شده است، قابل دسترسی است.
Following in the footsteps of its bestselling predecessors, the Handbook of Parametric and Nonparametric Statistical Procedures, Fifth Edition provides researchers, teachers, and students with an all-inclusive reference on univariate, bivariate, and multivariate statistical procedures.
New in the Fifth Edition:
Broad in scope, the Handbook is intended for individuals involved in a wide spectrum of academic disciplines encompassing the fields of mathematics, the social, biological, and environmental sciences, business, and education. A reference for statistically sophisticated individuals, the Handbook is also accessible to those lacking the theoretical or mathematical background required for understanding subject matter typically documented in statistics reference books.
Cover Title Page Half Title Copyright Page Dedication Preface Table of Contents Introduction Descriptive Versus Inferential Statistics Statistic Versus Parameter Levels of Measurement Continuous Versus Discrete Variables Measures of Central Tendency (Mode, Median, Mean, Weighted Mean, Geometric Mean, and the Harmonic Mean) Measures of Variability (Range; Quantiles, Percentiles, Quartiles, and Deciles; Variance and Standard Deviation; The Coefficient of Variation) Measures of Skewness and Kurtosis Visual Methods for Displaying Data (Tables and Graphs, Exploratory Data Analysis (Stem-and-leaf Displays and Boxplots)) The Normal Distribution Hypothesis Testing A History and Critique of the Classical Hypothesis Testing Model Estimation in Inferential Statistics Relevant Concepts, Issues, and Terminology in Conducting Research (The Observational Method; The Experimental Method; The Correlational Method) Experimental Design (Pre-experimental Designs; Quasi-experimental Designs; True Experimental Designs; Single-subject Designs) Sampling Methodologies Basic Principles of Probability Parametric Versus Nonparametric Inferential Statistical Tests Univariate Versus Bivariate Versus Multivariate Statistical Procedures Selection of the Appropriate Statistical Procedure References Endnotes Outline of Inferential Statistical Tests and Measures of Correlation/Association Guidelines and Decision Tables for Selecting the Appropriate Statistical Procedure Inferential Statistical Tests Employed with a Single Sample Test 1: The Single-Sample z Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-Sample z Test and/or Related Tests VII. Additional Discussion of the Single-Sample z Test 1. The Interpretation of a Negative z value 2. The Standard Error of the Population Mean and Graphical Representation of the Results of the Single-Sample z test 3. Additional Examples Illustrating the Interpretation of a Computed z Value 4. The z Test for a Population Proportion VIII. Additional Examples Illustrating the Use of the Single-Sample z Test References Endnotes Test 2: The Single-Sample t Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-Sample t Test and/or Related Tests 1. Determination of the Power of the Single-Sample t test and the Single Sample z test, and the Application of Test 2a: Cohen's d Index 2. Computation of a Confidence Interval for the Mean of the Population Represented by a Sample VII. Additional Discussion of the Single-Sample t Test Degrees of freedom VIII. Additional Examples Illustrating the Use of the Single-Sample t Test IX. Addendum Statistical Quality Control Process Control Acceptance Sampling References Endnotes Test 3: The Single-Sample Chi-Square Test for a Population Variance I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-Sample Chi-SquareTest for a Population Variance and/or Related Tests 1. Large Sample Normal Approximation of the Chi-Square Distribution 2. Computation of a Confidence Interval for the Variance of a Population Represented by a Sample 3. Sources for Computing the Power of the Single-Sample Chi-Square Test for a Population Variance VII. Additional Discussion of the Single-Sample Chi-Square Test for a Population Variance VIII. Additional Examples Illustrating the Use of the Single-Sample Chi-Square Test for a Population Variance References Endnotes Test 4: The Single-Sample Test for Evaluating Population Skewness I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-sample Test for Evaluating Population Skewness and/or Related Tests VII. Additional Discussion of the Single-Sample Test for Evaluating Population Skewness 1. Exact Tables for the Single-Sample Test for Evaluating Population Skewness 2. Note on a Nonparametric Test for Evaluating Skewness VIII. Additional Examples Illustrating the Use of the Single-Sample Test for Evaluating Population Skewness References Endnotes Test 5: The Single-Sample Test for Evaluating Population Kurtosis I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-sample Test for Evaluating Population Kurtosis and/or Related Tests 1. Test 5a: The D' Agostino-Pearson Test of Normality 2. Test 5b: The Jarque-Bera Test of Normality VII. Additional Discussion of the Single-Sample Test for Evaluating Population Kurtosis 1. Exact Tables for the Single-Sample Test for Evaluating Population Kurtosis 2. Additional Comments on Tests of Normality VIII. Additional Examples Illustrating the Use of the Single-Sample Test for Evaluating Population Kurtosis References Endnotes Test 6: The Wilcoxon Signed-Ranks Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Wilcoxon Signed RanksTest and/or Related Tests I. The Normal Approximation of the Wilcoxon Tstatistic for Large Sample Sizes 2. The Correction for Continuity for the Normal Approximation of the Wilcoxon Signed-Ranks Test 3. Tie Correction for the Normal Approximation of the Wilcoxon Test Statistic 4. Computation of a Confidence Interval for a Population Median VII. Additional Discussion of the Wilcoxon Signed-Ranks Test l. Power-Efficiency of the Wilcoxon Signed-Ranks Test and the Concept of Asymptotic Relative Efficiency 2. Note on Symmetric Population Concerning Hypotheses Regarding Median and Mean VIII. Additional Examples Illustrating the Use of the Wilcoxon Signed-Ranks Test References Endnotes Test 7: The Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample and/or Related Tests l. Computing a Confidence Interval for the Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample 2. The Power of the Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample 3. Test 7a: The Lilliefors Test for Normality VII. Additional Discussion of the Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample 1. Effect of Sample size on the Result of a Goodness-of-Fit Test 2. The Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample Versus the Chi-Square Goodness-of-Fit Test and Alternative Goodness-of-Fit Tests VIII. Additional Example Illustrating the Use of the Kolmogorov-Smirnov Goodness-of-Fit Test for a Single Sample References Endnotes Test 8: The Chi-Square Goodness-of-Fit Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Examples III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Chi-Square Goodness-of-Fit Test and/or Related Tests 1. Comparisons Involving Individual Cells when k > 2 2. The Analysis of Standardized Residuals 3. The Correction for Continuity for the Chi-Square Goodness-of-Fit Test 4. Computation of a Confidence Interval for the Chi-Square Goodness-of-Fit Test/Confidence Interval for a Population Proportion 5. Brief Discussion of the z Test for a Population Proportion (Test 9a) and the Single-Sample Test for the Median (Test 9b) 6. Application of the Chi-Square Goodness-of-Fit Test for Assessing Goodness-of-Fit for a Theoretical Population Distribution 7. Sources for Computing of the Power of the Chi-Square Goodness-of-Fit Test 8. Heterogeneity Chi-Square Analysis VII. Additional Discussion of the Chi-Square Goodness-of-Fit Test 1. Directionality of the Chi-Square Goodness-of-Fit Test 2. Additional Goodness-of-Fit Tests VIII. Additional Examples Illustrating the Use of the Chi-Square Goodness-of-Fit Test References Endnotes Test 9: The Binomial Sign Test for a Single Sample I. Hypothesis Evaluated with Test and Relevant Background Information II. Examples III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Binomial Sign Test for a Single Sample and/or Related Tests 1. Test 9a: The z Test for a Population Proportion (with Discussion of Correction for Continuity; Computation of a Confidence Interval; Procedure for Computing Sample Size for Test of Specified Power; Additional Comments on Computation of the Power of the Binomial Sign Test for a Single Sample) 2. Extension of the z Test for a Population Proportion to Evaluate the Performance of m Subjects on n Trials on a Binomially Distributed Variable 3. Test 9b: The Single-Sample Test for the Median VII. Additional Discussion of the Binomial Sign Test for a Single Sample 1. Evaluating Goodness-of-Fit for a Binomial Distribution VIII. Additional Example Illustrating the Use of the Binomial Sign Test for a Single Sample IX. Addendum 1. Discussion of Additional Discrete Probability Distributions and the Exponential Distribution a. The Multinomial Distribution b. The Negative Binomial Distribution c. The Hypergeometric Distribution d. The Poisson Distribution Computation of a Confidence Interval for a Poisson Parameter Test 9c: Test for Comparing Two Poisson Counts Evaluating Goodness-of-Fit for a Poisson Distribution e. The Exponential Distribution f. The Matching Distribution 2. Conditional Probability, Bayes' Theorem, Bayesian Statistics, and Hypothesis Testing Conditional Probability Bayes' Theorem Bayesian Hypothesis Testing Bayesian Analysis of a Continuous Variable References Endnotes Test 10: The Single-Sample Runs Test (and Other Tests of Randomness) I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-Sample Runs Test and/or Related Tests 1. The Normal Approximation of the Single-Sample Runs Test for Large Sample Sizes 2. The Correction for Continuity for the Normal Approximation of the Single-Sample Runs Test 3. Extension of the Runs Test to Data with More than Two Categories 4. Test lOa: The Runs Test for Serial Randomness VII. Additional Discussion of the Single-Sample Runs Test 1. Additional Discussion of the Concept of Randomness VII. Additional Examples Illustrating the Use of the Single-Sample Runs Test IX. Addendum 1. The Generation of Pseudorandom Numbers (The Midsquare Method; the Midproduct Method; the Linear Congruential Method) 2. Alternative Tests of Randomness Test 10b: The Frequency test Test 10c: The Gap Test Test 10d: The Poker Test Test 10e: The Maximum Test Test 10f: The Coupon Collector's Test Test 10g: The Mean Square Successive Difference Test (For Serial Randomness) Additional Tests of Randomness Test; The d 2 Square Test of Random Numbers; Tests of Trend Analysis/Time Series Analysis) References Endnotes Inferential Statistical Tests Employed with Two Independent Samples (and Related Measures of Association/Correlation) Test 11: The t Test for Two Independent Samples I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the t Test for Two Independent Samples and/or Related Tests 1. The Equation for the t Test for Two Independent Samples when a Value for a Difference other than Zero is Stated in the Null Hypothesis 2. Test 11a: Hartley's Fmax Test for Homogeneity of Variance/F Test for Two Population Variances: Evaluation of the Homogeneity of Variance Assumption of the t Test for Two Independent Samples 3. Computation of the Power of the t Test for Two Independent Samples and the Application of Test 11b: Cohen's d Index 4. Measures of Magnitude of Treatment Effect for the t Test for Two Independent Samples: Omega Squared (Test 11c) and Eta Squared (Test 11d) 5. Computation of a Confidence Interval for the t Test for Two Independent Samples 6. Test 11e: The z Test for Two Independent Samples VII. Additional Discussion of the t Test for Two Independent Samples 1. Unequal Sample Sizes 2. Robustness of the t Test for Two Independent Samples 3. Outliers (Procedures for Identifying Outliers: Box-and-Whiskerplot Criteria; Standard Deviation Score Criterion; Test 11f: Median Absolute Deviation Test for Identifying Outliers; Test 11g: Extreme Studentized Deviate Test for Identifying Outliers; Trimming Data; Winsorization) and Data Transformation 4. Missing Data 5. Clinical Trials 6. Tests of Equivalence: Test 11h: The Westlake-Schuirmann Test of Equivalence of Two Independent Treatments (and Procedure for Computing Sample Size in Reference to the Power of the Test) 7. Hotelling's T2 VIII. Additional Examples Illustrating the Use of the t Test for Two Independent Samples References Endnotes Test 12: The Mann-Whitney U Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Mann-Whitney U Test and/or Related Tests I. The Normal Approximation of the Mann-Whitney U Statistic for Large Sample Sizes 2. The Correction for Continuity for the Normal Approximation of the Mann-Whitney Utest 3. Tie Correction for the Normal Approximation of the Mann-Whitney Ustatistic 4. Computation of a Confidence Interval for a Difference Between the Medians of Two Independent Populations VII. Additional Discussion of the Mann-Whitney U Test 1. Power-Efficiency of the Mann-Whitney U Test 2. Equivalency of the Normal Approximation of the Mann-Whitney U Test and the t Test for Two Independent Samples with Rank Orders 3. Alternative Nonparametric Rank-Order Procedures for Evaluating a Design Involving Two Independent Samples VIII. Additional Examples Illustrating the Use of the Mann-Whitney U Test IX. Addendum 1. Computer-Intensive Tests (Randomization and Permutation Tests: Test 12a: The Randomization Test for Two Independent Samples; Test12b: The Bootstrap; Test 12c: The Jackknife; Final Comments on Computer-Intensive Procedures) 2. Survival Analysis (Test 12d: Kaplan-Meier Estimate) 3. Procedures for Evaluating Censored Data in a Design Involving Two Independent Samples (Permutation Test Based on the Median, Gehan's Test for Censored Data (Test 12e), and the Log-Rank Test (Test 12f)) References Endnotes Test 13: The Kolmogorov-Smirnov Test for Two Independent Samples I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Kolmogorov-Smirnov Test for Two Independent Samples and/or Related Tests 1. Graphical Method for Computing the Kolmogorov-Smirnov Test Statistic 2. Computing Sample Confidence Intervals for the Kolmogorov-Smirnov Test for Two Independent Samples 3. Large Sample Chi-Square Approximation for a One-Tailed Analysis of the Kolmogorov-Smimov Test for Two Independent Samples VII. Additional Discussion of the Kolmogorov-Smirnov Test for Two Independent Samples 1. Additional Comments on the Kolmogorov-Smirnov Test for Two Independent Samples VIII. Additional Examples Illustrating the Use of the Kolmogorov-Smirnov Test for Two Independent Samples References Endnotes Test 14: The Siegel-Tukey Test for Equal Variability I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Siegel-Tukey Test for Equal Variability and/or Related Tests 1. The Normal Approximation of the Siegel-Tukey Test Statistic for Large Sample Sizes 2. The Correction for Continuity for the Normal Approximation of the Siegel-Tukey Test for Equal Variability 3. Tie Correction for the Normal Approximation of the Siegel-Tukey Test Statistic 4. Adjustment of Scores for the Siegel-Tukey Test for Equal Variability when Q1=Q2 VII. Additional Discussion of the Siegel-Tukey Test for Equal Variability 1. Analysis of the Homogeneity of Variance Hypothesis for the Same Set of Data with Both a Parametric and Nonparametric Test, and the Power Efficiency of the Siegel-Tukey Test for Equal Variability 2. Alternative Nonparametric Tests of Dispersion VIII. Additional Examples Illustrating the Use of the Siegel-Tukey Test for Equal Variability References Endnotes Test 15: The Moses Test for Equal Variability I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Moses Test for Equal Variability and/or Related Tests 1. The Normal Approximation of the Moses Test Statistic for Large Sample Sizes VII. Additional Discussion of the Moses Test for Equal Variability 1. Power-Efficiency of the Moses Test for Equal Variability 2. Issue of Repetitive Resampling 3. Alternative Nonparametric Tests of Dispersion VIII. Additional Examples Illustrating the Use of the Moses Test for Equal Variability References Endnotes Test 16: The Chi-Square Test for r x c Tables (Test 16a: The Chi-Square Test for Homogeneity; Test 16b: The Chi-Square Test of lndependence (Employed with a Single Sample)) I. Hypothesis Evaluated with Test and Relevant Background Information II. Examples III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Chi-Square Test for r x c Tables and/or Related Tests 1. Yates' Correction for Continuity 2. Quick Computational Equation for a 2 x 2 table 3. Evaluation of a directional Alternative Hypothesis in the Case of a 2 x2 Contingency Table 4. Test 16c: The Fisher Exact Test 5. Test 16d: The z Test for Two Independent Proportions(and Computation of Sample Size in Reference to Power) 6. Computation of a Confidence Interval for a Difference Between Two Proportions 7. Test 16e: The Median Test for Independent Samples 8. Extension of the Chi-Square Test for r x c Tables to Contingency Tables Involving More than Two Rows and/or Columns, and Associated Comparison Procedures 9. The analysis of Standardized Residuals 10. Sources for Computing the Power of the Chi-Square Test for r x c Tables 11. Measures of Association for r x c Contingency Tables Test 16f: The Contingency Coefficient Test 16g: The Phi Coefficient Test 16h: Cramer's Phi Coefficient Test 16i: Yule's Q Test 16j: The odds ratio (and the concept of relative risk)(and Test 16j-a: Test of Significance for an Odds Ratio and Computation of a Confidence Interval for an Odds Ratio) Test 16k: Cohen's Kappa (and Computation of a Confidence Interval for Kappa, Test 16k-a: Test of Significance for Cohen's Kappa, and Test 16k-b: Test of Significance for Two Independent Values of Cohen's Kappa) 12. Combining the Results of Multiple 2 x 2 Contingency Tables: Heterogeneity Chi-Square Analysis for a 2 x 2 Contingency Table Heterogeneity Chi-Square Analysis for a 2 x 2 Contingency Table Test 16L: The Mantei-Haenszel Analysis/Test (Test 161-a:Test of Homogeneity of odds ratios for Mantel-Haenszel analysis, Test 161-b: Summary Odds Ratio for Mantei Haenszel analysis, and Test 161-c: Mantel-Haenszel Test of Association) VII. Additional Discussion of the Chi-Square Test for r x c Tables 1. Equivalency of the Chi-Square Test for r x c Tables when c = 2 with the t Test for Two Independent Samples (when r = 2) and the Single-Factor Between-Subjects Analysis of Variance (when r > 2) 2. Test of Equivalence for Two Independent Proportions: Test 16m: The Westlake-Schuirmann test of Equivalence of Two Independent Proportions (and Procedure for Computing Sample Size in Reference to the Power of the Test) 3. Test 16n: The Log-Likelihood Ratio 4. Simpson's Paradox 5. Analysis of Multidimensional Contingency Tables Through use of a Chi-Square Analysis 6. Test 16O: Analysis of Multidimensional Contingency Tables with Log-Linear Analysis VIII. Additional Examples Illustrating the Use of the Chi-Square Test for r x c Tables References Endnotes Inferential Statistical Tests Employed with Two Dependent Samples (and Related Measures of Association/Correlation) Test 17: The t Test for Two Dependent Samples I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the t Test for Two Dependent Samples and/or Related Tests 1. Alternative Equation for the t Test for Two Dependent Samples 2. The Equation for the t Test for Two Dependent Samples when a Value for a Difference Other than Zero is Stated in the Null Hypothesis 3. Test 17a: The t Test for Homogeneity of Variance for Two Dependent Samples: Evaluation of the Homogeneity of Variance Assumption of the t Test for Two Dependent Samples 4. Computation of the Power of the t Test for Two Dependent Samples and the Application of Test 17b: Cohen's d Index 5. Measure of Magnitude of Treatment Effect for the t Test for Two Dependent Samples: Omega Squared (Test 17c) 6. Computation of a Confidence Interval for the t Test for Two Dependent Samples 7. Test 17d: Sandler's A Test 8. Test 17e: The z Test for Two Dependent Samples VII. Additional Discussion of the t Test for Two Dependent Samples 1. The Use of Matched Subjects in a Dependent Samples Design 2. Relative Power of the t Test for Two Dependent Samples and the t Test for Two Independent Samples 3. Counterbalancing and Order Effects 4. Analysis of a One-Group Pretest-Posttest Design with the t Test for Two Dependent Samples 5. Tests of Equivalence: Test 17f: The Westlake-Schuirmann Test of Equivalence of Two Dependent Treatments (and Procedure for Computing Sample Size in Reference to the Power of the Test) VIII. Additional Example Illustrating the Use of the t Test for Two Dependent Samples References Endnotes Test 18: The Wilcoxon Matched-Pairs Signed-Ranks Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Wilcoxon Matched-Pairs Signed-Ranks Test and/or Related Tests 1. The Normal Approximation of the Wilcoxon T Statistic for Large Sample Sizes 2. The Correction for Continuity for the Normal Approximation of the Wilcoxon Matched-Pairs Signed-Ranks Test 3. Tie Correction for the Normal Approximation of the Wilcoxon Test Statistic 4. Computation of a Confidence Interval for a Median Difference Between Two Dependent Populations VII. Additional Discussion of the Wilcoxon Matched-Pairs Signed-RanksTest 1. Power-Efficiency of the Wilcoxon Matched-Pairs Signed-Ranks Test 2. Probability of Superiority as a Measure of Effect Size 3. Alternative Nonparametric Procedures for Evaluating a Design Involving Two Dependent Samples VIII. Additional Examples Illustrating the Use of the Wilcoxon Matched-Pairs Signed-Ranks Test References Endnotes Test 19: The Binomial Sign Test for Two Dependent Samples I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Binomial Sign Test for TwoDependent Samples and/or Related Tests I. The Normal Approximation of the Binomial Sign Test for Two Dependent Samples with and without a Correction for Continuity 2. Computation of a Confidence Interval for the Binomial Sign Test for Two Dependent Samples 3. Sources for Computing the Power of the Binomial Sign Test for Two Dependent Samples, and Comments on the Asymptotic Relative Efficiency of the Test VII. Additional Discussion of the Binomial Sign Test for Two Dependent Samples 1. The Problem of an Excessive Number of Zero Difference Scores 2. Equivalency of The Binomial Sign Test for two Dependent Samples and the Friedman Two-way Analysis of Variance By Ranks When K = 2 VIII. Additional Examples Illustrating the Use of the Binomial Sign Test for two Dependent Samples References Endnotes Test 20: The McNemar Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Examples III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Mcnemar Test and/or Related Tests 1. Alternative Equation for the Mcnemar Test Statistic Based on the Normal Distribution 2. The Correction for Continuity for the Mcnemar Test 3. Computation of the Exact Binomial Probability for the Mcnemar Test Model with a Small Sample Size 4. Computation of the Power of the Mcnemar Test 5. Computation of a Confidence Interval for the McNemar Test 6. Computation of an Odds Ratio for the McNemar Test 7. Additional Analytical Procedures for the Mcnemar Test 8. Test 20a: The Gart Test for Order Effects VII. Additional Discussion of the Mcnemar Test 1. Alternative Format for the Mcnemar Test Summary Table and Modified Test Equation 2. The Effect of Disregarding Matching 3. Alternative Nonparametric Procedures for Evaluating a Design with two Dependent Samples Involving Categorical Data 4. Test of Equivalence for two Independent Proportions: Test 20b: The Westlake-schuirmann Test of Equivalence of two Dependent Proportions VIII. Additional Examples Illustrating the Use of The Mcnemar Test Ix. Addendum Extension of the Mcnemar Test Model Beyond 2 X 2 Contingency Tables 1. Test 20c: The Bowker Test of Internal Symmetry 2. Test 20d: The Stuart-maxwell Test of Marginal Homogeneity References Endnotes Inferential Statistical Tests Employed with Two or More Independent Samples (and Related Measures of Association/Correlation) Test 21: The Single-Factor Between-Subjects Analysis of Variance I. Hypothesis Evaluated with Test And Relevant Background Information II. Example Ill. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-Factor Between- Subjects Analysis of Variance and/or Related Tests I. Comparisons Following Computation of the Omnibus F Value for the Single-Factor Between-Subjects Analysis of Variance (Planned Versus Unplanned Comparisons (Including Simple Versus Complex Comparisons); Linear Contrasts; Orthogonal Comparisons; Test 21a: Multiplet tests/Fisher's LSD test; Test 2lb: The BonferroniDunntest; Test 21c: Tukey's HSD test; Test 2ld: The Newman-Keuls Test Test 21e: The Scheffe Test; Test 21f: The Dunnett Test; Additional Discussion of Comparison Procedures and Final Recommendations; The Computation of a Confidence Interval for a Comparison 2. Comparing the Means of Three or More Groups When k>4 3. Evaluation of the Homogeneity of Variance Assumption of the Singlefoctor between-Subjects Analysis of Variance (Test lla: Hartley's Fmax Test for Homogeneity of Variance, Test 21g: The Levene Test for Homogeneity of Variance, Test 21h: The Brown-Forsythe Test for Homogeneity of Variance) 4. Computation of the Power of the Single-Factor Between-Subjects Analysis of Variance 5. Measures of Magnitude of Treatment Effect for the Single-Factor Between-Subjects analysis of Variance: Omega Squared (Test 21i), Eta Squared (Test 21j), and Cohen's f index (Test 21k) 6. Computation of a Confidence Interval for the Mean of a Treatment Population 7. Trend Analysis VII. Additional Discussion of the Single-Factor Between-Subjects Analysis of Variance I. Theoretical Rationale Underlying the Single-Factor Between-Subjects Analysis of Variance 2. Defmitional Equations for the Single-Factor Between-Subjects Analysis of Variance 3. Equivalency of the Single-Factor Between-Subjects Analysis of Variance and the Test for two Independent Samples When k = 2 4. Robustness of the Single-Factor Between-Subjects Analysis of Variance 5. Equivalency of the Single-Factor Between-Subjects Analysis of Variance and the Test for two Independent Samples with the Chi-Square Test for r x c Tables When c= 2 6. The General Linear Model 7. Fixed-Effects Versus Random-Effects Models for the Single-Factor Between-Subjects Analysis of Variance 8. Multivariate Analysis of Variance (MANOVA) VIII. Additional Examples Illustrating the Use ofthe Single-Factor Between Subjects Analysis of Variance IX. Addendum I. Test 211: The Single-Factor Between-Subjects Analysis of Covariance References Endnotes Test 22: The Kruskal-Wallis One-Way Analysis of Variance by Ranks I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Kruskal-Wallis One-Way Analysis of Variance by Ranks and/or Related Tests I. Tie Correction for the Kruskal-Wallis One-Way Analysis of Variance by Ranks 2. Pairwise Comparisons Following Computation of the Test Statistic for the Kruskal-Wallis One-Way Analysis of Variance by Ranks VII. Additional Discussion of the Kruskal-Wallis One-Way Analysis of Variance by Ranks Variance by Ranks I. Exact Tables of the Kruskal-Wallis Distribution 2. Equivalency of the Kruskal-Wallis One-Way Analysis of Variance by Ranks and the Mann-Whitney U Test When k = 2 3. Power-Efficiency of the Kruskal-Wallis One-Way Analysis of Variance by Ranks 4. Alternative Nonparametric Rank-Order Procedures for Evaluating a Design Involving k Independent Samples VIII. Additional Examples Illustrating the Use of the Kruskal-Wallis One- Way Analysis of Variance by Ranks IX. Addendum 1. Test 22a: The Jonckheere-Terpstra Test for Ordered Alternatives References Endnotes Test 23: The Van Der Waerden Normal-Scores Test for k Independent Samples I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the van der Waerden Normal-Scores Test for k Independent Samples and/or Related Tests 1. Pairwise Comparisons Following Computation of the Test Statistic for the Van Der Waerden Normal-Scores Test Fork Independent Samples VII. Additional Discussion of the Van Der Waerden Normal-Scores Test for k Independent Samples I. Alternative Normal-Scores Tests VIII. Additional Examples Illustrating the Use of the van der Waerden Normal-Scores Test fork Independent Samples References Endnotes Inferential Statistical Tests Employed with Two or More Dependent Samples (and Related Measures of Association/Correlation) Test 24: The Single-Factor Within-Subjects Analysis of Variance I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Single-Factor Within-Subjects Analysis of Variance and/or Related Tests 1. Comparisons Following Computation of the Omnibus F Value for the Single-Factor Within-Subjects Analysis of Variance (Test 24a: Multiple t Tests/Fisher's LSD Test; Test 24b: The Bonferroni- Dunn Test; Test 24c: Tukey's HSD Test; Test 24d: The Newman-Keuls Test; Test 24e: The Scheffe Test; Test 24f: The Dunnett Test; The Computation of a Confidence Interval for a Comparison; Alternative Methodology for Computing MSres for a Comparison) 2. Comparing the Means of Three or More Conditions when k >4 3. Evaluation of the Sphericity Assumption Underlying the Single-Factor Within-Subjects Analysis of Variance 4. Computation of the Power of the Single-Factor Within-Subjects Analysis of Variance 5. Measures of Magnitude of Treatment Effect for the Single-Factor Within-Subjects Analysis of Variance: Omega Squared (Test 24g) and Cohen's! index (Test 24h) 6. Computation of a Confidence Interval for the Mean of a Treatment Population 7. Test 24i: The Intraclass Correlation Coefficient VII. Additional Discussion of the Single-Factor Within-Subjects Analysis of Variance 1. Theoretical Rationale Underlying the Single-Factor Within-Subjects Analysis of Variance 2. Definitional Equations for the Single-Factor Within-Subjects Analysis of Variance 3. Relative Power of the Single-Factor Within-Subjects Analysis of Variance 4. Equivalency of the Single-Factor Within-Subjects Analysis of Variance and the t Test for two Dependent Samples When k = 2 5. The Latin Square Design VIII. Additional Examples Illustrating the Use of the Single-Factor Within- Subjects Analysis of Variance References Endnotes Test 25: The Friedman Two-Way Analysis of Variance by Ranks I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Friedman Two-Way Analysis Variance by Ranks and/or Related Tests 1. Tie Correction for the Friedman two-way Analysis Variance by Ranks 2. Pairwise Comparisons Following Computation of the test Statistic for the Friedman two-way Analysis of Variance by Ranks VII. Additional Discussion of the Friedman Two-Way Analysis of Variance by Ranks 1. Exact Tables of the Friedman Distribution 2. Equivalency of the Friedman two-way Analysis of Variance by Ranks and the Binomial Sign Test for two Dependent Samples When k=2 3. Power-Eficiency of the Friedman two-way Analysis of Variance by Ranks 4. Alternative Nonparametric Rank-Order Procedures for Evaluating a Design Involving k Dependent Samples 5. Relationship Between the Friedman two-way Analysis of Variance by Ranks and Kendall's Coefficient of Concordance VIII. Additional Examples Illustrating the Use of the Friedman Two-Way Analysis of Variance by Ranks IX. Addendum 1. Test 25a: The Page Test for Ordered Alternatives References Endnotes Test 26: The Cochran Q Test I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Cochran Q Test and/or Related Tests 1. Pairwise Comparisons Following Computation of the test Statistic for the Cochran Q Test VII. Additional Discussion of the Cochran Q Test 1. Issues Relating to Subjects who Obtain the Same Score Under all of the Experimental Conditions 2. Equivalency of the Cochran Q Test and the McNemar Test When k=2 3. Alternative Nonparametric Procedures with Categorical Data for Evaluating a Design Involving k Dependent Samples VIII. Additional Examples Illustrating the Use of the Cochran Q Test References Endnotes Inferential Statistical Test Employed with a Factorial Design (and Related Measures of Association/Correlation) Test 27: The Between-Subjects Factorial Analysis of Variance I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Between-Subjects Factorial Analysis of Variance and/or Related Tests 1. Comparisons Following Computation of the F Values for the Between-Subjects Factorial Analysis of Variance (Test 27a: Multiple t Tests/ Fisher's LSD Test; Test 27b: The Bonferroni-Dunn Test; Test 27c: Tukey's HSD Test; Test 27d: The Newman-Keuls Test; Test 27e: The Scheffe Test; Test 27f: The Dunnett Test; Comparisons Between the Marginal Means; Evaluation of an Omnibus Hypothesis Involving More Than Two Marginal Means; Comparisons Between Speciic Groups That are a Combination of Both Factors; The Computation of a Confidence Interval for a Comparison; Analysis of Simple Effects) 2. Evaluation of the Homogeneity of Variance Assumption of the Between Subjects Factorial Analysis of Variance 3. Computation of the Power of the Between-Subjects Factorial Analysis of Variance 4. Measures of Magnitude of Treatment Effect for the Between-Subjects Factorial Analysis of Variance: Omega Squared (Test 27g) and Cohen's /index (Test 27h) 5. Computation of a Confidence Interval for the Mean of a Population Represented by a Group VII. Additional Discussion of the Between-Subjects Factorial Analysis of Variance 1. Theoretical Rationale Underlying the Between-Subjects Factorial Analysis of Variance 2. Definitional Equations for the Between-Subjects Factorial Analysis of Variance 3. Unequal Sample Sizes 4. The Randomized-Blocks Design 5. Additional Comments on the Between-Subjects Factorial Analysis of Variance (Fixed-Effects Versus Random-Effects Versus Mixed-Effects Models; Nested Factors/Hierarchical Designs and Designs Involving More Than two Factors; Screening Designs) VIII. Additional Examples Illustrating the Use of the Between-Subjects Factorial Analysis of Variance IX. Addendum Discussion of and Computational Procedures for Additional Analysis of Variance Procedures for Factorial Designs 1. Test 27i: The Factorial Analysis of Variance for a Mixed Design Analysis of a Crossover Design with a Factorial Analysis of Variance for a Mixed Design 2. Test 27j: Analysis of Variance for a Latin Square Design 3. Test 27k: The Within-Subjects Factorial Analysis of Variance 4. Analysis of Higher-Order Factorial Designs References Endnotes Measures of Association/Correlation Test 28: The Pearson Product-Moment Correlation Coefficient I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results (Test 28a: Test of Significance for a Pearson Product-Moment Correlation Coefficient; The Coefficient of Determination) VI. Additional Analytical Procedures for the Pearson Product-Moment Correlation Coefficient and/or Related Tests I. Derivation of a Regression line 2. The Standard Error of Estimate 3. Computation of a Confidence Interval for the Value of the Criterion Variable 4. Computation of a Confidence Interval for a Pearson Product-Moment Correlation Coefficient 5. Test 28b: Test for Evaluating the Hypothesis That the True Population Correlation is a Specific Value Other Than Zero 6. Computation of Power for the Pearson Product-Moment Correlation Coefficient 7. Test 28c: Test for Evaluating a Hypothesis on Whether There is a Significant Difference Between two Independent Correlations 8. Test 28d: Test for Evaluating a Hypothesis on Whether k Independent 9. Test 28e: Test for Evaluating the Null Hypothesis H0: Pxz = Prz 10. Tests for Evaluating a Hypothesis Regarding One or More Regression Coefficients (Test 28f: Test for Evaluating the Null Hypothesis H0:B = 0; Test 28g: Test for Evaluating the Null Hypothesis H0: B1=B2 11. Additional Correlational Procedures VII. Additional Discussion of the Pearson Product-Moment Correlation Coefficient I. The Definitional Equation for the Pearson Product-Moment Correlation Coefficient 2. Covariance 3. The Homoscedasticity Assumption of the Pearson Product-Moment Correlation Coefficient 4. Residuals, Analysis of Variance for Regression Analysis, and Regression Diagnostics 5. Autocorrelation (and Test 28h: Durbin-Watson test) 6. The Phi Coefficient as a Special Case of the Pearson Product-Moment Correlation Coefficient 7. Ecological Correlation 8. Cross-Lagged Panel and Regression-Discontinuity Designs VIII. Additional Examples Illustrating the Use of the Pearson Product- Moment Correlation Coefficient IX. Addendum 1. Bivariate Measures of Correlation That are Related to the Pearson Productmoment Correlation Coefficient (Test 28i: The Point-Biserial Correlation Coefficient); Test 28j: The biserial Correlation Coefficient (and Test 28j-a: Test oF Significance for a Biserial Correlation Coefficient); Test 28k: The Tetrachoric Correlation Coefficient (and Test 28k-a: Test of Significance for a Tetrachoric Cor-Relation Coefficient)) 2. Data Mining 3. Time Series Analysis References Endnotes Test 29: Spearman's Rank-Order Correlation Coefficient I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results (Test 29a: Test of Significance for Spearman's Rank-Order Correlation Coefficient) VI. Additional Analytical Procedures for Spearman's Rank-Order Correlation Coefficient and/or Related Tests 1. Tie Correction for Spearman's Rank-Order Correlation Coefficient 2. Spearman's Rank-Order Correlation CoeffiCient as a Special Case of the Pearson Product-Moment Correlation Coefficient 3. Regression analysis and Spearman's Rank-Order Correlation Coefficient 4. Partial Rank Correlation 5. Use of Fisher's zr, Transformation with Spearman's Rank-Order Correlation Coefficient VII. Additional Discussion of Spearman's Rank-Order Correlation Coefficient 1. The Relationship Between Spearman's Rank-Order Correlation Coefficient, Kendall's Coefficient of Concordance, and the Friedman two-way Analysis of Variance by Ranks 2. Power Efficiency of Spearman's Rank-Order Correlation Coefficient 3. Brief Discussion of Kendall' s tau: An Alternative Measure of Association for Two Sets of Ranks 4. Weighted Rank/top-Down Correlation VIII. Additional Examples Illustrating the Use of the Spearman's Rank-Order Correlation Coefficient References Endnotes Test 30: Kendall's Tau I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results (Test 30a: Test of Significance for Kendall's tau) VI. Additional Analytical Procedures for Kendall's Tau and/or Related Tests 1. Tie Correction for Kendall's Tau 2. Regression Analysis and Kendall's Tau 3. Partial Rank Correlation 4. Sources for Computing a Confidence Interval for Kendall's Tau VII. Additional Discussion of Kendall's Tau 1. Power Efficiency of Kendall's Tau 2. Kendall's Coefficient of Agreement VIII. Additional Examples Illustrating the Use of Kendall's Tau References Endnotes Test 31: Kendall's Coefficient of Concordance I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results (Test 31a: Test of Significance for Kendall's Coefficient of Concordance) VI. Additional Analytical Procedures for Kendall's Coefficient of Concordance and/or Related Tests 1. Tie Correction for Kendall's Coefficient of Concordance VII. Additional Discussion ofKendall's Coefficient of Concordance 1. Relationship Between Kendall's Coefficient of Concordance and Spearman's Rank-Order Correlation Coefficient 2. Relationship Between Kendall's Coefficient of Concordance and the Friedman Two-way Analysis of Variance by Ranks 3. Weighted Rank/top-Down Concordance 4. Kendall's Coefficient of Concordance Versus the Intraclass Correlation Coefficient VIII. Additional Examples Illustrating the Use of Kendall's Coefficient of Concordance References Endnotes Test 32: Goodman and Kruskal's Gamma I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results (Test 32a: Test of Significance for Goodman and Kruskal's Gamma) VI. Additional Analytical Procedures for Goodman and Kruskal's Gamma and/or Related Tests 1. The Computation of a Confidence Interval for the Value of Goodman and Kruskal's Gamma 2. Test 32b: Test for Evaluating the Null Hypothesis H0: y1 = y2 3. Sources for Computing a Partial Correlation Coefficient for Goodman and Kruskal's Gamma VII. Additional Discussion of Goodman and Kruskal's Gamma 1. Relationship Between Goodman and Kruskal's Gamma and Yule's Q 2. Somers' Delta as an Alternative Measure of Association for an Ordered Contingency Table VIII. Additional Examples Illustrating the Use of Goodman and Kruskal's Gamma References Endnotes Multivariate Statistical Analysis Matrix Algebra and Multivariate Analysis I. Introductory Comments on Multivariate Statistical Analysis II. Introduction to Matrix Algebra References Endnotes Test 33: Multiple Regression I. Hypothesis Evaluated with Test and Relevant Background Information II. Examples III. Null versus Alternative Hypotheses IVN. Test Computations and Interpretation of the Test Results A. Test Computations and Interpretation of Results for Example 33.1 (Computation of the Multiple Correlation Coefficient; The Coefficient of Multiple Determination; Test of Significance for a Multiple Correlation Coefficient; The Multiple Regression Equation; The Standard Error of Multiple Estimate; Computation of a Confidence Interval for Y'; Evaluation of the Relative Importance of the Predictor Variables; Evaluating the Significance of a Regression Coefficient; Computation of a Confidence Interval for a Regression Coefficient; Analysis of Variance for Multiple Regression; Semipartial and Partial Correlation (Test 33a: Computation of a Semipartial Correlation Coefficient; Test of Significance for a Semipartial Correlation Coefficient; Test Coefficient; Test of Significance for a Partial Correlation Coefficient) B. Test Computations and Interpretation of Results for Example 33.2 with SPSS VI. Additional Analytical Procedures for Multiple Regression and/or Related Tests 1. Cross-Validation of Sample Data VII. Additional Discussion of Multiple Regression 1. Final Comments on Multiple Regression Analysis 2. Causal Modeling: Path Analysis and Structural Equation Modeling 3. Brief Note on Logistic Regression VIII. Additional Examples Illustrating the Use of Multiple Regression References Endnotes Test 34: Hotelling's T2 I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for Hotelling's T2 and/or Related Tests 1. Additional Analyses Following the Test of the Omnibus Null Hypothesis 2. Test 34a: The Single-Sample Hotelling's T2 3. Test 34b: The Use of the Single-Sample Hotelling's T2 to Evaluate a Dependent Samples Design VII. Additional Discussion ofHotelling's T 2 1. Hotelling's T 2 and Mahalanobis' D2 Statistic VIII. Additional Examples Illustrating the Use of Hotelling's T 2 References Endnotes Test 35: Multivariate Analysis of Variance I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Multivariate Analysis ofV ariance and/or Related Tests VII. Additional Discussion of the Multivariate Analysis of Variance 1. Conceptualizing the Hypothesis for the Multivariate Analysis of Variance Within the Context of a Linear Combination 2. Multicollinearity and the Multivariate Analysis of Variance VIII. Additional Examples Illustrating the Use of the Multivariate Analysis of Variance References Endnotes Test 36: Multivariate Analysis of Covariance I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for the Multivariate Analysis of Covariance and/or Related Tests VII. Additional Discussion of the Multivariate Analysis of Covariance 1. Multiple Covariates VIII. Additional Examples Illustrating the Use of the Multivariate Analysis of Covariance References Endnotes Test 37: Discriminant Function Analysis I. Hypothesis Evaluated with Test and Relevant Background Information II. Examples Ill. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results Analysis of Example 37.1 Analysis of Example 37.2 VI. Additional Analytical Procedures for Discriminant Function Analysis and/or Related Tests VII. Additional Discussion of Discriminant Function Analysis VIII. Additional Examples Illustrating the Use of Discriminant VIII. Additional Examples Illustrating the Use of Discriminant References Endnotes Test 38: Canonical Correlation I. Hypothesis Evaluated with Test and Relevant Background Information II. Example Ill. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for Canonical Correlation and/or Related Tests VII. Additional Discussion of Canonical Correlation VIII. Additional Examples Illustrating the Use of Canonical Correlation References Endnotes Test 39: Logistic Regression I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results Results for a Binary Logistic Regression with One Predictor Variable Results for a Binary Logistic Regression with Multiple Predictor Variables VI. Additional Analytical Procedures for Logistic Regression and/or Related Tests VII. Additional Discussion of Logistic Regression VIII. Additional Examples Illustrating the Use of Logistic Regression References Endnotes Test 40: Principal Components Analysis and Factor Analysis I. Hypothesis Evaluated with Test and Relevant Background Information II. Example III. Null versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results VI. Additional Analytical Procedures for Principal Components Analysis and Factor Analysis and/or Related Tests 1. Principal Axis Factor Analysis of Example 40.1 VII. Additional Discussion of Principal Components Analysis and Factor Analysis 1. Criticisms of factor analytic Procedures 2. Cluster Analysis 3. Multidimensional Scaling VIII. Additional Examples Illustrating the Use of Principal Components Analysis and Factor Analysis References Endnotes Test 41: Path Analysis I. Hypothesis Evaluated with Test and Relevant Background Information Additional Discussion of Basic Terminology Employed in Path Analysis Assumptions Underlying Bath Analysis II. Example III. Null versus Alternative Hypotheses IV. Test Computations Decomposition of Correlations Among Pairs of Variables Model Identification Computation of Degrees of Freedom for a Bath Model Determination of the Number of Observations Determination of the Number of Parameters to be Estimated Guidelines for Evaluating Effect Values Decomposition of Correlations Among Pairs of Variables in Models A and B V. Interpretation of the Test Results Goodness-of-Fit Indices for a Path Analysis Model VI. Additional Analytical Procedures for Path Analysis VII. Additional Discussion of Path Analysis VIII. Additional Examples Illustrating the Use or Path analysis References Endnotes Test 42: Structural Equation Modeling I. Hypothesis Evaluated with Test and Relevant Background Information Assumptions Underlying SEM Elements Employed in a Structural Equation Model Methods for Summarizing a Structural Model II. Example III. Null Versus Alternative Hypotheses IV. Test Computations V. Interpretation of the Test Results Guidelines for Determining Degrees of Freedom Assessing Model Fit Analysis of Example 42.1 VI. Additional Analytical Procedures for Structural Equation Modeling VII. Additional Discussion of Structural Equation Modeling SEM Software Additional Sources of Information on SEM VIII. Additional Examples Illustrating the Use of Structural Equation Modeling References Endnotes Test 43: Meta-Analysis I. Hypothesis Evaluated with Test and Relevant Background Information Relevant Background Information on Meta-Analysis Measures of Effect Size Relevant Background Information on Meta-Analysis Measures of Effect Size II. Examples III. Null versus Alternative Hypotheses IV /V. Test Computations and Interpretation of Test Results Meta-Analytic Procedures Employing Significance Level and Effect Size Test 43a: Procedure for Comparing k Studies with Respect to Significance Level Test 43b: The Stouffer Procedure for Obtaining a Combined Significance Level (P Value) Fork Studies The File Drawer Problem Test 43c: Homogeneity Analysis for Comparing k Studies with respect to Effect Size Test 43d: ProCedure for Obtaining a Combined Effect Size for k Studies Meta-Analytic Procedures Based on Weighting Effect Sizes with Inverse Variance Weights Test 43e: Procedure for Obtaining a Weighted Mean Effect Size Fork Studies Test 43f: Procedure for Evaluating the Null Hypothesis That the True Value of the Overall Effect Size in the Underlying Population Equals 0 Test 43g: Procedure for Computing a Confidence Interval for the Mean Effect Size Test 43h: Homogeneity Analysis for Comparing k Studies with Respect to Effect Size Through Use of Inverse Variance Eeights VI. Additional Analytical Procedures for Meta-Analysis Graphing techniques for meta-analysis Alternative Meta-Analytic Procedures Practical implications of magnitude of effect size value Test 43i: Binomial effect size display VII. Additional Discussion of Meta-Analysis Meta-Analysis Software The Significance Test Controversy The Minimum-Effect Hypothesis Testing model VIII. Additional Examples Illustrating the Use of Meta-Analysis References Endnotes Appendix: Tables Table Al. Table of the Normal Distribution Table A2. Table of Student's t Distribution Table A3. Power Curves for Student's t Distribution Table A4. Table of the Chi-Square Distribution Table A5. Table of Critical T Values for Wilcoxon's Signed Ranks and Matched-Pairs Signed-Ranks Tests Table A6. Table of the Binomial Distribution, Individual Probabilities Table A7. Table of the Binomial Distribution, Cumulative Probabilities Table A8. Table of Critical Values for the Single-Sample Runs Test Table A9. Table of the Fmax Distribution Table A10. Table of the F Distribution Table A11. Table of Critical Values for Mann-Whitney U Statistic Table A12. Table of Sandler's A Statistic Table A13. Table of the Studentized Range Statistic Table A14. Table of Dunnett's Modified t Statistic for a Control Group Comparison Table A15. Graphs of the Power Function for the Analysis of Variance Table A16. Table of Critical Values for Pearson r Table A17. Table of Fisher's Zr Transformation Table A18. Table of Critical Values for Spearman's Rho Table A19. Table of Critical Values for Kendall's Tau Table A20. Table of Critical Values for Kendall's Coefficient of Concordance Table A21. Table of Critical Values for the Kolmogorov-Smirnov Goodness-of-Fit Testfor a Single Sample Table A22. Table of Critical Values for the Lilliefors Test for Normality Table A23. Table of Critical Values for the Kolmogorov-Smirnov Test for Two Independent Samples Table A24. Table of Critical Values for the Jonckheere-Terpstra Test Statistic Table A25. Table of Critical Values for Page Test Statistic Table A26. Table of Extreme Studentized Deviate Outlier Statistic Table A27. Table of Durbin-Watson Test Statistic Table A28. Constants Used for Estimation and Construction of Control Charts Index