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| Preface | p. ix |
| Introduction | p. 1 |
| What is the value of statistics? | p. 3 |
| Brief introduction to the history of statistics | p. 5 |
| General statistical definitions | p. 5 |
| Types of variables | p. 7 |
| Scales of measurement | p. 8 |
| Summary | p. 12 |
| Data Representation | p. 16 |
| Tabular display of distributions | p. 18 |
| Graphical display of distributions | p. 23 |
| Percentiles | p. 29 |
| SPSS | p. 33 |
| Summary | p. 34 |
| Univariate Population Parameters and Sample Statistics | p. 39 |
| Summation notation | p. 40 |
| Measures of central tendency | p. 41 |
| Measures of dispersion | p. 45 |
| SPSS | p. 53 |
| Summary | p. 55 |
| The Normal Distribution and Standard Scores | p. 59 |
| The normal distribution | p. 60 |
| Standard scores | p. 65 |
| Skewness and kurtosis statistics | p. 68 |
| SPSS | p. 72 |
| Summary | p. 73 |
| Introduction to Probability and Sample Statistics | p. 77 |
| Brief introduction to probability | p. 78 |
| Sampling and estimation | p. 81 |
| Summary | p. 87 |
| Introduction to Hypothesis Testing: Inferences About a Single Mean | p. 92 |
| Types of hypotheses | p. 93 |
| Types of decision errors | p. 95 |
| Level of significance [Alpha] | p. 98 |
| Overview of steps in the decision-making process | p. 100 |
| Inferences about [Mu] when [sigma] is known | p. 101 |
| Type II error [Beta] and power [1 - Beta] | p. 105 |
| Statistical versus practical significance | p. 108 |
| Inferences about [Mu] when [sigma] is unknown | p. 109 |
| SPSS | p. 113 |
| Summary | p. 114 |
| Inferences About the Difference Between Two Means | p. 119 |
| New concepts | p. 120 |
| Inferences about two independent means | p. 122 |
| Inferences about two dependent means | p. 129 |
| SPSS | p. 133 |
| Summary | p. 134 |
| Inferences About Proportions | p. 140 |
| Inferences about proportions involving the normal distribution | p. 141 |
| Inferences about proportions involving the chi-square distribution | p. 151 |
| SPSS | p. 156 |
| Summary | p. 158 |
| Inferences About Variances | p. 162 |
| New concepts | p. 163 |
| Inferences about a single variance | p. 164 |
| Inferences about two dependent variances | p. 166 |
| Inferences about two or more independent variances (homogeneity of variance tests) | p. 168 |
| SPSS | p. 172 |
| Summary | p. 173 |
| Bivariate Measures of Association | p. 176 |
| Scatterplot | p. 177 |
| Covariance | p. 179 |
| Pearson product-moment correlation coefficient | p. 182 |
| Inferences about the Pearson product-moment correlation coefficient | p. 183 |
| Some issues regarding correlations | p. 186 |
| Other measures of association | p. 188 |
| SPSS | p. 191 |
| Summary | p. 192 |
| One-Factor Analysis of Variance-Fixed-Effects Model | p. 196 |
| Characteristics of the one-factor ANOVA model | p. 198 |
| The layout of the data | p. 200 |
| ANOVA theory | p. 201 |
| The ANOVA model | p. 206 |
| Assumptions and violation of assumptions | p. 210 |
| The unequal n's or unbalanced design | p. 213 |
| Alternative ANOVA procedures | p. 213 |
| SPSS | p. 215 |
| Summary | p. 217 |
| Multiple Comparison Procedures | p. 222 |
| Concepts of multiple comparison procedures | p. 224 |
| Selected multiple comparison procedures | p. 228 |
| SPSS | p. 241 |
| Summary | p. 242 |
| Factorial Analysis of Variance-Fixed-Effects Model | p. 247 |
| The two-factor ANOVA model | p. 249 |
| Three-factor and higher-order ANOVA | p. 265 |
| Factorial ANOVA with unequal n's | p. 267 |
| SPSS | p. 268 |
| Summary | p. 269 |
| Introduction to Analysis of Covariance: The One-Factor Fixed-Effects Model With a Single Covariate | p. 277 |
| Characteristics of the model | p. 278 |
| The layout of the data | p. 281 |
| The ANCOVA model | p. 281 |
| The ANCOVA summary table | p. 282 |
| Partitioning the sums of squares | p. 283 |
| Adjusted means and related procedures | p. 283 |
| Assumptions and violation of assumptions | p. 286 |
| An example | p. 289 |
| ANCOVA without randomization | p. 292 |
| More complex ANCOVA models | p. 293 |
| Nonparametric ANCOVA procedures | p. 293 |
| SPSS | p. 293 |
| Summary | p. 294 |
| Random-and Mixed-Effects Analysis of Variance Models | p. 301 |
| The one-factor random-effects model | p. 303 |
| The two-factor random-effects model | p. 306 |
| The two-factor mixed-effects model | p. 309 |
| The one-factor repeated measures design | p. 313 |
| The two-factor split-plot or mixed design | p. 319 |
| SPSS | p. 325 |
| Summary | p. 331 |
| Hierarchical and Randomized Block Analysis of Variance Models | p. 335 |
| The two-factor hierarchical model | p. 336 |
| The two-factor randomized block design for n = 1 | p. 343 |
| The two-factor randomized block design for n > 1 | p. 350 |
| The Friedman test | p. 350 |
| Comparison of various ANOVA models | p. 351 |
| SPSS | p. 353 |
| Summary | p. 357 |
| Simple Linear Regression | p. 361 |
| The concepts of simple linear regression | p. 362 |
| The population simple linear regression model | p. 364 |
| The sample simple linear regression model | p. 365 |
| SPSS | p. 381 |
| Summary | p. 383 |
| Multiple Regression | p. 387 |
| Partial and semipartial correlations | p. 388 |
| Multiple linear regression | p. 390 |
| Other regression models | p. 403 |
| SPSS | p. 408 |
| What's next? | p. 408 |
| Summary | p. 410 |
| References | p. 415 |
| Appendix Tables | p. 425 |
| Answers | p. 449 |
| Index | p. 463 |
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