TY - BOOK AU - Coladarci,Theodore TI - Fundamentals of statistical reasoning in education / SN - 9780470084069 (paper/CDROM) U1 - 370.2/1 22 PY - 2008/// CY - Hoboken, NJ PB - John Wiley & Sons KW - Educational statistics N1 - Includes bibliographical references (p. 419-420) and index; Contents Chapter 1 introduction 1 Why statistics? 1 Descriptive statistics 2 Inferential statistics 3 The role of statistics in Educational research 4 Variables and their Measurement 5 Some tips on studying Statistics 9 Part i Descriptive statistics 13 Chapter 2 frequency Distributions 15 2.1 why organize data? 15 2.2 frequency distributions for Quantitative variables 15 2.3 grouped scores 17 2.4 some guidelines for forming Class intervals 18 2.5 constructing a grouped-data Frequency distribution 19 2.6 the relative frequency Distribution 21 2.7 exact limits 22 2.8 the cumulative percentage Frequency distribution 24 2.9 percentile ranks 25 2.10 frequency distributions for Qualitative variables 27 2.11 summary 28 Chapter 3 graphic Representation 37 3.1 why graph data? 37 3.2 graphing qualitative data: the Bar chart 37 3.3 graphing quantitative data: the Histogram 38 3.4 the frequency polygon 42 3.5 comparing different Distributions 43 3.6 relative frequency and Proportional area 44 3.7 characteristics of frequency Distributions 46 3.8 the box plot 49 3.9 summary 51 Chapter 4 central tendency 59 4.1 the concept of central tendency 59 4.2 the mode 59 4.3 the median 60 4.4 the arithmetic mean 62 4.5 central tendency and Distribution symmetry 64 4.6 which measure of central Tendency to use? 66 4.7 summary 67 Ix Revised 78001 f04.3d ggs 3/15/07 19:9 Chapter 5 variability 75 5.1 central tendency is not enough: The importance of variability 75 5.2 the range 76 5.3 variability and deviations from The mean 77 5.4 the variance 78 5.5 the standard deviation 79 5.6 the predominance of the Variance and standard Deviation 81 5.7 the standard deviation and the Normal distribution 81 5.8 comparing means of two Distributions: the relevance of Variability 82 5.9 in the denominator: n vs. N 21 85 5.10 summary 85 Chapter 6 normal distributions And standard scores 91 6.1 a little history: sir francis Galton and the normal curve 91 6.2 properties of the normal curve 92 6.3 more on the standard deviation And the normal distribution 93 6.4 z scores 95 6.5 the normal curve table 97 6.6 finding area when the score is Known 99 6.7 reversing the process: finding Scores when the area is known 102 6.8 comparing scores from different Distributions 104 6.9 interpreting effect size 105 6.10 percentile ranks and the normal Distribution 107 6.11 other standard scores 108 6.12 standard scores do not ??Normalize?? A distribution 109 6.13 the normal curve and Probability 110 6.14 summary 110 Chapter 7 correlation 119 7.1 the concept of association 119 7.2 bivariate distributions and Scatterplots 119 7.3 the covariance 124 7.4 the pearson r 130 7.5 computation of r: the calculating Formula 133 7.6 correlation and causation 135 7.7 factors influencing pearson r 136 7.8 judging the strength of Association: r 2 139 7.9 other correlation coefficients 141 7.10 summary 141 Chapter 8 regression and Prediction 149 8.1 correlation versus prediction 149 8.2 determining the line of Best fit 150 8.3 the regression equation in Terms of raw scores 153 8.4 interpreting the raw-score Slope 156 8.5 the regression equation in Terms of z scores 157 8.6 some insights regarding Correlation and prediction 158 8.7 regression and sums of squares 161 8.8 measuring the margin of Prediction error: the standard Error of estimate 163 8.9 correlation and causality (revisited) 168 8.10 summary 169 X contents Revised 78001 f04.3d ggs 3/15/07 19:9 Part 2 Inferential statistics 179 Chapter 9 probability and Probability Distributions 181 9.1 statistical inference: accounting For chance in sample results 181 9.2 probability: the study of chance 182 9.3 definition of probability 183 9.4 probability distributions 185 9.5 the or/addition rule 187 9.6 the and/multiplication rule 188 9.7 the normal curve as a Probability distribution 189 9.8 ??So what??? Probability Distributions as the basis for Statistical inference 192 9.9 summary 192 Chapter 10 sampling Distributions 197 10.1 from coins to means 197 10.2 samples and populations 198 10.3 statistics and parameters 199 10.4 random sampling model 200 10.5 random sampling in practice 201 10.6 sampling distributions of means 202 10.7 characteristics of a sampling Distribution of means 204 10.8 using a sampling distribution Of means to determine Probabilities 207 10.9 the importance of sample Size (n) 211 10.10 generality of the concept of a Sampling distribution 212 10.11 summary 213 Chapter 11 testing statistical Hypotheses about m When s is known: The one-sample Z test 221 11.1 testing a hypothesis about m: Does ??Homeschooling?? Make a Difference? 221 11.2 dr. Meyer?s problem in a Nutshell 222 11.3 the statistical hypotheses: H0 and h1 223 11.4 the test statistic z 225 11.5 the probability of the test Statistic: the p value 226 11.6 the decision criterion: level of Significance (a) 227 11.7 the level of significance and Decision error 229 11.8 the nature and role of h0 and h1 231 11.9 rejection versus retention of h0 232 11.10 statistical significance versus Importance 233 11.11 directional and nondirectional Alternative hypotheses 235 11.12 prologue: the substantive versus The statistical 237 11.13 summary 239 Chapter 12 estimation 247 12.1 hypothesis testing versus Estimation 247 12.2 point estimation versus interval Estimation 248 12.3 constructing an interval estimate Of m 249 12.4 interval width and level of Confidence 252 12.5 interval width and sample size 253 Contents xi Revised 78001 f04.3d ggs 3/15/07 19:9 12.6 interval estimation and Hypothesis testing 253 12.7 advantages of interval estimation 255 12.8 summary 256 Chapter 13 testing statistical Hypotheses about m When s is not Known: the One-sample t test 263 13.1 reality: s often is unknown 263 13.2 estimating the standard error of The mean 264 13.3 the test statistic t 266 13.4 degrees of freedom 267 13.5 the sampling distribution of Student?s t 268 13.6 an application of student?s t 270 13.7 assumption of population Normality 272 13.8 levels of significance versus P values 273 13.9 constructing a confidence interval For m when s is not known 275 13.10 summary 275 Chapter 14 comparing the Means of two Populations: Independent Samples 283 14.1 from one mu to two 283 14.2 statistical hypotheses 284 14.3 the sampling distribution of Differences between means 285 14.4 estimating sx12x2 288 14.5 the t test for two independent Samples 289 14.6 testing hypotheses about two Independent means: an example 290 14.7 interval estimation of m1 2 m2 293 14.8 appraising the magnitude of a Difference: measures of effect Size for x12x2 295 14.9 how were groups formed? The role of randomization 299 14.10 statistical inferences and Nonstatistical generalizations 300 14.11 summary 301 Chapter 15 comparing the Means of dependent Samples 309 15.1 the meaning of ??Dependent?? 309 15.2 standard error of the difference Between dependent means 310 15.3 degrees of freedom 312 15.4 the t test for two dependent Samples 312 15.5 testing hypotheses about two Dependent means: an example 315 15.6 interval estimation of md 317 15.7 summary 318 Chapter 16 comparing the Means of three or More independent Samples: one-way Analysis of Variance 327 16.1 comparing more than two Groups: why not multiple t tests? 327 16.2 the statistical hypotheses in One-way anova 328 16.3 the logic of one-way anova: An overview 329 16.4 alison?s reply to gregory 332 16.5 partitioning the sums of squares 333 16.6 within-groups and between- Groups variance estimates 337 Xii contents Revised 78001 f04.3d ggs 3/15/07 19:9 16.7 the f test 337 16.8 tukey?s ??Hsd?? Test 339 16.9 interval estimation of mi 2 mj 342 16.10 one-way anova: summarizing The steps 343 16.11 estimating the strength of the Treatment effect: effect size (o? 2) 345 16.12 anova assumptions (and Other considerations) 346 16.13 summary 347 Chapter 17 inferences about The pearson Correlation Coefficient 357 17.1 from m to r 357 17.2 the sampling distribution of r When r 5 0 357 17.3 testing the statistical hypothesis That r 5 0 359 17.4 an example 359 17.5 table e 361 17.6 the role of n in the statistical Significance of r 363 17.7 statistical significance versus Importance (again) 364 17.8 testing hypotheses other than R 5 0 364 17.9 interval estimation of r 365 17.10 summary 367 Chapter 18 making inferences From frequency Data 375 18.1 frequency data versus score data 375 18.2 a problem involving frequencies: The one-variable case 376 18.3 x2: a measure of discrepancy Between expected and observed Frequencies 377 18.4 the sampling distribution of x2 379 18.5 completion of the voter survey Problem: the x2 goodness-of-fit Test 380 18.6 the x2 test of a single proportion 381 18.7 interval estimate of a Single proportion 383 18.8 when there are two variables: The x2 test of independence 385 18.9 the null hypothesis of Independence 387 18.10 calculating the two-variable x2 388 18.11 the x2 test of independence: Summarizing the steps 391 18.12 the 2 _ 2 contingency table 392 18.13 testing a difference between Two proportions 393 18.14 the independence of Observations 393 18.15 x2 and quantitative variables 394 18.16 other considerations 395 18.17 summary 395 Chapter 19 statistical ??Power?? (and how to Increase it) 403 19.1 the power of a statistical test 403 19.2 power and type ii error 404 19.3 effect size (revisited) 405 19.4 factors affected power: The effect size 406 19.5 factors affecting power: Sample size 407 19.6 additional factors affecting Power 408 19.7 significance versus importance 410 19.8 selecting an appropriate Sample size 410 19.9 summary 414 References 419 Contents xiii Revised 78001 f04.3d ggs 3/15/07 19:9 Appendix a review of basic Mathematics 421 A.1 introduction 421 A.2 symbols and their meaning 421 A.3 arithmetic operations involving Positive and negative numbers 422 A.4 squares and square roots 422 A.5 fractions 423 A.6 operations involving parentheses 424 A.7 approximate numbers, Computational accuracy, and Rounding 425 Appendix b answers to selected End-of-chapter Problems 426 Appendix c statistical tables 448 Index 461 Xiv contents ER -