Description

Book Synopsis

A comprehensive and user-friendly introduction to statistics for behavioral science students?revised and updated

Refined over seven editions by master teachers, this book gives instructors and students alike clear examples and carefully crafted exercises to support the teaching and learning of statistics for both manipulating and consuming data.

One of the most popular and respected statistics texts in the behavioral sciences, the Seventh Edition of Introductory Statistics for the Behavioral Sciences has been fully revised. The new edition presents all the topics students in the behavioral sciences need in a uniquely accessible and easy-to-understand format, aiding in the comprehension and implementation of the statistical analyses most commonly used in the behavioral sciences.

The Seventh Edition features:

  • A continuous narrative that clearly explains statistics while tracking a common data set throughout, making the concepts unintimidating and

    Table of Contents
    Preface xv

    Acknowledgments xix

    Glossary of Symbols xxi

    Part I Descriptive Statistics 1

    Chapter 1 Introduction 3

    Why Study Statistics? 4

    Descriptive and Inferential Statistics 5

    Populations, Samples, Parameters, and Statistics 6

    Measurement Scales 7

    Independent and Dependent Variables 10

    Summation Notation 12

    Ihno’s Study 16

    Summary 18

    Exercises 19

    Thought Questions 23

    Computer Exercises 23

    Bridge to SPSS 24

    Chapter 2 Frequency Distributions and Graphs 26

    The Purpose of Descriptive Statistics 27

    Regular Frequency Distributions 28

    Cumulative Frequency Distributions 30

    Grouped Frequency Distributions 31

    Real and Apparent Limits 33

    Interpreting a Raw Score 34

    Definition of Percentile Rank and Percentile 34

    Computational Procedures 35

    Deciles, Quartiles, and the Median 38

    Graphic Representations 39

    Shapes of Frequency Distributions 43

    Summary 45

    Exercises 47

    Thought Questions 49

    Computer Exercises 49

    Bridge to SPSS 50

    Chapter 3 Measures of Central Tendency and Variability 53

    Introduction 54

    The Mode 56

    The Median 56

    The Mean 58

    The Concept of Variability 62

    The Range 65

    The Standard Deviation and Variance 66

    Summary 73

    Exercises 75

    Thought Questions 76

    Computer Exercises 77

    Bridge to SPSS 78

    Chapter 4 Standardized Scores and the Normal Distribution 81

    Interpreting a Raw Score Revisited 82

    Rules for Changing μ and σ 84

    Standard Scores (z Scores) 85

    T Scores, SAT Scores, and IQ Scores 88

    The Normal Distribution 90

    Table of the Standard Normal Distribution 93

    Illustrative Examples 95

    Summary 101

    Exercises 103

    Thought Questions 105

    Computer Exercises 106

    Bridge to SPSS 106

    Part II Basic Inferential Statistics 109

    Chapter 5 Introduction to Statistical Inference 111

    Introduction 113

    The Goals of Inferential Statistics 114

    Sampling Distributions 114

    The Standard Error of the Mean 119

    The z Score for Sample Means 122

    Null Hypothesis Testing 124

    Assumptions Required by the Statistical Test for the Mean of a Single Population 132

    Summary 133

    Exercises 135

    Thought Questions 137

    Computer Exercises 138

    Bridge to SPSS 138

    Appendix: The Null Hypothesis Testing Controversy 139

    Chapter 6 The One-Sample t Test and Interval Estimation 142

    Introduction 143

    The Statistical Test for the Mean of a Single Population When σ Is Not Known: The t Distributions 144

    Interval Estimation 148

    The Standard Error of a Proportion 152

    Summary 155

    Exercises 156

    Thought Questions 157

    Computer Exercises 158

    Bridge to SPSS 158

    Chapter 7 Testing Hypotheses About the Difference Between the Means of Two Populations 160

    The Standard Error of the Difference 162

    Estimating the Standard Error of the Difference 166

    The t Test for Two Sample Means 167

    Confidence Intervals for μ1 − μ2 172

    The Assumptions Underlying the Proper Use of the t Test for Two Sample Means 175

    Measuring the Size of an Effect 176

    The t Test for Matched Samples 178

    Summary 185

    Exercises 187

    Thought Questions 190

    Computer Exercises 191

    Bridge to SPSS 191

    Chapter 8 Nonparametric Tests for the Difference Between Two Means 194

    Introduction 195

    The Difference Between the Locations of Two Independent Samples: The Rank-Sum Test 199

    The Difference Between the Locations of Two Matched Samples: The Wilcoxon Test 205

    Summary 210

    Exercises 212

    Thought Questions 215

    Computer Exercises 216

    Bridge to SPSS 216

    Chapter 9 Linear Correlation 218

    Introduction 219

    Describing the Linear Relationship Between Two Variables 222

    Interpreting the Magnitude of a Pearson r 229

    When Is It Important That Pearson’s r Be Large? 234

    Testing the Significance of the Correlation Coefficient 236

    The Relationship Between Two Ranked Variables: The Spearman Rank-Order Correlation Coefficient 239

    Summary 242

    Exercises 244

    Thought Questions 247

    Computer Exercises 248

    Bridge to SPSS 248

    Appendix: Equivalence of the Various Formulas for r 251

    Chapter 10 Prediction and Linear Regression 253

    Introduction 254

    Using Linear Regression to Make Predictions 254

    Measuring Prediction Error: The Standard Error of Estimate 263

    The Connection Between Correlation and the t Test 265

    Estimating the Proportion of Variance Accounted for in the Population 271

    Summary 273

    Exercises 275

    Thought Questions 277

    Computer Exercises 277

    Bridge to SPSS 278

    Chapter 11 Introduction to Power Analysis 281

    Introduction 282

    Concepts of Power Analysis 283

    The Significance Test of the Mean of a Single Population 285

    The Significance Test of the Proportion of a Single Population 290

    The Significance Test of a Pearson r 292

    Testing the Difference Between Independent Means 293

    Testing the Difference Between the Means of Two Matched Populations 297

    Choosing a Value for d for a Power Analysis Involving Independent Means 299

    Using Power Analysis Concepts to Interpret the Results of Null Hypothesis Tests 301

    Summary 304

    Exercises 306

    Thought Questions 308

    Computer Exercises 309

    Bridge to SPSS 310

    Part III Analysis of Variance Methods 313

    Chapter 12 One-Way Analysis of Variance 315

    Introduction 317

    The General Logic of ANOVA 318

    Computational Procedures 321

    Testing the F Ratio for Statistical Significance 326

    Calculating the One-Way ANOVA From Means and Standard Deviations 328

    Comparing the One-Way ANOVA With the t Test 329

    A Simplified ANOVA Formula for Equal Sample Sizes 330

    Effect Size for the One-Way ANOVA 331

    Some Comments on the Use of ANOVA 333

    A Nonparametric Alternative to the One-Way ANOVA: The Kruskal-Wallis H Test 336

    Summary 339

    Exercises 343

    Thought Questions 346

    Computer Exercises 346

    Bridge to SPSS 346

    Appendix: Proof That the Total Sum of Squares Is Equal to the Sum of the Between-Group and the Within-Group Sum of Squares 348

    Chapter 13 Multiple Comparisons 349

    Introduction 350

    Fisher’s Protected t Tests and the Least Significant Difference (LSD) 351

    Tukey’s Honestly Significant Difference (HSD) 355

    Other Multiple Comparison Procedures 360

    Planned and Complex Comparisons 362

    Nonparametric Multiple Comparisons: The Protected Rank-Sum Test 365

    Summary 366

    Exercises 368

    Thought Questions 369

    Computer Exercises 370

    Bridge to SPSS 370

    Chapter 14 Introduction to Factorial Design: Two-Way Analysis of Variance 372

    Introduction 373

    Computational Procedures 374

    The Meaning of Interaction 384

    Following Up a Significant Interaction 387

    Measuring Effect Size in a Factorial ANOVA 390

    Summary 392

    Exercises 395

    Thought Questions 398

    Computer Exercises 399

    Bridge to SPSS 399

    Chapter 15 Repeated-Measures ANOVA 402

    Introduction 403

    Calculating the One-Way RM ANOVA 403

    Rationale for the RM ANOVA Error Term 408

    Assumptions and Other Considerations Involving the RM ANOVA 408

    The RM Versus RB Design: An Introduction to the Issues of Experimental Design 411

    The Two-Way Mixed Design 415

    Summary 423

    Exercises 428

    Thought Questions 430

    Computer Exercises 430

    Bridge to SPSS 431

    Part IV Nonparametric Statistics for Categorical Data 435

    Chapter 16 Probability of Discrete Events and the Binomial Distribution 437

    Introduction 438

    Probability 439

    The Binomial Distribution 442

    The Sign Test for Matched Samples 448

    Summary 450

    Exercises 451

    Thought Questions 453

    Computer Exercises 453

    Bridge to SPSS 454

    Chapter 17 Chi-Square Tests 457

    Chi Square and the Goodness of Fit: One-Variable Problems 458

    Chi Square as a Test of Independence: Two-Variable Problems 464

    Measures of Strength of Association in Two-Variable Tables 470

    Summary 472

    Exercises 474

    Thought Questions 476

    Computer Exercises 477

    Bridge to SPSS 478

    Appendix 481

    Statistical Tables 483

    Answers to Odd-Numbered Exercises 499

    Data From Ihno’s Experiment 511

    Glossary of Terms 515

    References 525

    Index 527

Introductory Statistics for the Behavioral

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    A Hardback by Joan Welkowitz, Barry H. Cohen, R. Brooke Lea

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      View other formats and editions of Introductory Statistics for the Behavioral by Joan Welkowitz

      Publisher: John Wiley & Sons Inc
      Publication Date: 27/01/2012
      ISBN13: 9780470907764, 978-0470907764
      ISBN10: 0470907762

      Description

      Book Synopsis

      A comprehensive and user-friendly introduction to statistics for behavioral science students?revised and updated

      Refined over seven editions by master teachers, this book gives instructors and students alike clear examples and carefully crafted exercises to support the teaching and learning of statistics for both manipulating and consuming data.

      One of the most popular and respected statistics texts in the behavioral sciences, the Seventh Edition of Introductory Statistics for the Behavioral Sciences has been fully revised. The new edition presents all the topics students in the behavioral sciences need in a uniquely accessible and easy-to-understand format, aiding in the comprehension and implementation of the statistical analyses most commonly used in the behavioral sciences.

      The Seventh Edition features:

      • A continuous narrative that clearly explains statistics while tracking a common data set throughout, making the concepts unintimidating and

        Table of Contents
        Preface xv

        Acknowledgments xix

        Glossary of Symbols xxi

        Part I Descriptive Statistics 1

        Chapter 1 Introduction 3

        Why Study Statistics? 4

        Descriptive and Inferential Statistics 5

        Populations, Samples, Parameters, and Statistics 6

        Measurement Scales 7

        Independent and Dependent Variables 10

        Summation Notation 12

        Ihno’s Study 16

        Summary 18

        Exercises 19

        Thought Questions 23

        Computer Exercises 23

        Bridge to SPSS 24

        Chapter 2 Frequency Distributions and Graphs 26

        The Purpose of Descriptive Statistics 27

        Regular Frequency Distributions 28

        Cumulative Frequency Distributions 30

        Grouped Frequency Distributions 31

        Real and Apparent Limits 33

        Interpreting a Raw Score 34

        Definition of Percentile Rank and Percentile 34

        Computational Procedures 35

        Deciles, Quartiles, and the Median 38

        Graphic Representations 39

        Shapes of Frequency Distributions 43

        Summary 45

        Exercises 47

        Thought Questions 49

        Computer Exercises 49

        Bridge to SPSS 50

        Chapter 3 Measures of Central Tendency and Variability 53

        Introduction 54

        The Mode 56

        The Median 56

        The Mean 58

        The Concept of Variability 62

        The Range 65

        The Standard Deviation and Variance 66

        Summary 73

        Exercises 75

        Thought Questions 76

        Computer Exercises 77

        Bridge to SPSS 78

        Chapter 4 Standardized Scores and the Normal Distribution 81

        Interpreting a Raw Score Revisited 82

        Rules for Changing μ and σ 84

        Standard Scores (z Scores) 85

        T Scores, SAT Scores, and IQ Scores 88

        The Normal Distribution 90

        Table of the Standard Normal Distribution 93

        Illustrative Examples 95

        Summary 101

        Exercises 103

        Thought Questions 105

        Computer Exercises 106

        Bridge to SPSS 106

        Part II Basic Inferential Statistics 109

        Chapter 5 Introduction to Statistical Inference 111

        Introduction 113

        The Goals of Inferential Statistics 114

        Sampling Distributions 114

        The Standard Error of the Mean 119

        The z Score for Sample Means 122

        Null Hypothesis Testing 124

        Assumptions Required by the Statistical Test for the Mean of a Single Population 132

        Summary 133

        Exercises 135

        Thought Questions 137

        Computer Exercises 138

        Bridge to SPSS 138

        Appendix: The Null Hypothesis Testing Controversy 139

        Chapter 6 The One-Sample t Test and Interval Estimation 142

        Introduction 143

        The Statistical Test for the Mean of a Single Population When σ Is Not Known: The t Distributions 144

        Interval Estimation 148

        The Standard Error of a Proportion 152

        Summary 155

        Exercises 156

        Thought Questions 157

        Computer Exercises 158

        Bridge to SPSS 158

        Chapter 7 Testing Hypotheses About the Difference Between the Means of Two Populations 160

        The Standard Error of the Difference 162

        Estimating the Standard Error of the Difference 166

        The t Test for Two Sample Means 167

        Confidence Intervals for μ1 − μ2 172

        The Assumptions Underlying the Proper Use of the t Test for Two Sample Means 175

        Measuring the Size of an Effect 176

        The t Test for Matched Samples 178

        Summary 185

        Exercises 187

        Thought Questions 190

        Computer Exercises 191

        Bridge to SPSS 191

        Chapter 8 Nonparametric Tests for the Difference Between Two Means 194

        Introduction 195

        The Difference Between the Locations of Two Independent Samples: The Rank-Sum Test 199

        The Difference Between the Locations of Two Matched Samples: The Wilcoxon Test 205

        Summary 210

        Exercises 212

        Thought Questions 215

        Computer Exercises 216

        Bridge to SPSS 216

        Chapter 9 Linear Correlation 218

        Introduction 219

        Describing the Linear Relationship Between Two Variables 222

        Interpreting the Magnitude of a Pearson r 229

        When Is It Important That Pearson’s r Be Large? 234

        Testing the Significance of the Correlation Coefficient 236

        The Relationship Between Two Ranked Variables: The Spearman Rank-Order Correlation Coefficient 239

        Summary 242

        Exercises 244

        Thought Questions 247

        Computer Exercises 248

        Bridge to SPSS 248

        Appendix: Equivalence of the Various Formulas for r 251

        Chapter 10 Prediction and Linear Regression 253

        Introduction 254

        Using Linear Regression to Make Predictions 254

        Measuring Prediction Error: The Standard Error of Estimate 263

        The Connection Between Correlation and the t Test 265

        Estimating the Proportion of Variance Accounted for in the Population 271

        Summary 273

        Exercises 275

        Thought Questions 277

        Computer Exercises 277

        Bridge to SPSS 278

        Chapter 11 Introduction to Power Analysis 281

        Introduction 282

        Concepts of Power Analysis 283

        The Significance Test of the Mean of a Single Population 285

        The Significance Test of the Proportion of a Single Population 290

        The Significance Test of a Pearson r 292

        Testing the Difference Between Independent Means 293

        Testing the Difference Between the Means of Two Matched Populations 297

        Choosing a Value for d for a Power Analysis Involving Independent Means 299

        Using Power Analysis Concepts to Interpret the Results of Null Hypothesis Tests 301

        Summary 304

        Exercises 306

        Thought Questions 308

        Computer Exercises 309

        Bridge to SPSS 310

        Part III Analysis of Variance Methods 313

        Chapter 12 One-Way Analysis of Variance 315

        Introduction 317

        The General Logic of ANOVA 318

        Computational Procedures 321

        Testing the F Ratio for Statistical Significance 326

        Calculating the One-Way ANOVA From Means and Standard Deviations 328

        Comparing the One-Way ANOVA With the t Test 329

        A Simplified ANOVA Formula for Equal Sample Sizes 330

        Effect Size for the One-Way ANOVA 331

        Some Comments on the Use of ANOVA 333

        A Nonparametric Alternative to the One-Way ANOVA: The Kruskal-Wallis H Test 336

        Summary 339

        Exercises 343

        Thought Questions 346

        Computer Exercises 346

        Bridge to SPSS 346

        Appendix: Proof That the Total Sum of Squares Is Equal to the Sum of the Between-Group and the Within-Group Sum of Squares 348

        Chapter 13 Multiple Comparisons 349

        Introduction 350

        Fisher’s Protected t Tests and the Least Significant Difference (LSD) 351

        Tukey’s Honestly Significant Difference (HSD) 355

        Other Multiple Comparison Procedures 360

        Planned and Complex Comparisons 362

        Nonparametric Multiple Comparisons: The Protected Rank-Sum Test 365

        Summary 366

        Exercises 368

        Thought Questions 369

        Computer Exercises 370

        Bridge to SPSS 370

        Chapter 14 Introduction to Factorial Design: Two-Way Analysis of Variance 372

        Introduction 373

        Computational Procedures 374

        The Meaning of Interaction 384

        Following Up a Significant Interaction 387

        Measuring Effect Size in a Factorial ANOVA 390

        Summary 392

        Exercises 395

        Thought Questions 398

        Computer Exercises 399

        Bridge to SPSS 399

        Chapter 15 Repeated-Measures ANOVA 402

        Introduction 403

        Calculating the One-Way RM ANOVA 403

        Rationale for the RM ANOVA Error Term 408

        Assumptions and Other Considerations Involving the RM ANOVA 408

        The RM Versus RB Design: An Introduction to the Issues of Experimental Design 411

        The Two-Way Mixed Design 415

        Summary 423

        Exercises 428

        Thought Questions 430

        Computer Exercises 430

        Bridge to SPSS 431

        Part IV Nonparametric Statistics for Categorical Data 435

        Chapter 16 Probability of Discrete Events and the Binomial Distribution 437

        Introduction 438

        Probability 439

        The Binomial Distribution 442

        The Sign Test for Matched Samples 448

        Summary 450

        Exercises 451

        Thought Questions 453

        Computer Exercises 453

        Bridge to SPSS 454

        Chapter 17 Chi-Square Tests 457

        Chi Square and the Goodness of Fit: One-Variable Problems 458

        Chi Square as a Test of Independence: Two-Variable Problems 464

        Measures of Strength of Association in Two-Variable Tables 470

        Summary 472

        Exercises 474

        Thought Questions 476

        Computer Exercises 477

        Bridge to SPSS 478

        Appendix 481

        Statistical Tables 483

        Answers to Odd-Numbered Exercises 499

        Data From Ihno’s Experiment 511

        Glossary of Terms 515

        References 525

        Index 527

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