- Series
- Pearson
- Author
- Ralph L. Rosnow / Robert Rosenthal
- Publisher
- Pearson
- Cover
- Softcover
- Edition
- 7
- Language
- English
- Total pages
- 408
- Pub.-date
- March 2012
- ISBN13
- 9780205810314
- ISBN
- 0205810314
- Related Titles

ISBN | Product | Product | Price CHF | Available | |
---|---|---|---|---|---|

Beginning Behavioral Research: A Conceptual Primer |
9780205810314 Beginning Behavioral Research: A Conceptual Primer |
273.40 | approx. 7-9 days |

*Continuing the Chain of Discovery and Understanding*

*Beginning Behavioral Research* introduces students to the broad base and conceptual underpinnings of basic principles of ethical research with human participants from (a) the development of ideas and testable hypotheses, to (b) the selection of appropriate methods of measurement and data collection, to (c) the design and implementation of empirical research, to (d) the statistical analysis and interpretation of results, and finally, to (e) the reporting of findings and conclusions. The authors emphasize good research, empirical reasoning, and the continuity of psychological science in the continuing cycle of discovery and understanding.

The *beginning* in the title of this text is intended to have a double meaning. It not only describes the level of the material but also conveys the idea of a journey. For some students, the journey will be completed at the end of the course in which this text is used. For others, the journey will have just begun. In either case, students will have a deeper understanding of the applicability and limits of the scientific method. They will also have learned how to frame questions about the scientific results they read or hear about in the media in ways that will allow them to reach beyond other people’s conclusions or assertions and decide for themselves what is true.

__Additional Learning Goals__

Upon completing this book, students who are expected to conduct a research study should be able to:

- Craft a research idea that can be empirically tested
- Choose methods of data collection and measurement
- Develop a research proposal
- Design and implement the research study
- Approach the research data
- Test and evaluate hypotheses and explore the results
- Report the research project in the APA style

- Chapters follow a logical, linear sequence and include
**tutorials**, a**sample research proposal**, and a**sample research report.**(ex. pg. 306) -
**Box discussions**highlight and enliven concepts with practical examples and illustrations. (ex. pg. 223) -
**Preview questions**open each chapter and serve as**section headings**in the material that follows. (ex. pg. 128) -
**Summary lists****of statistical equations**that are keyed to pages in the text are inside the front and back covers to use as reference. -
**Tabbed appendices**make it easy to find instructions on**reporting results in APA style**,**statistical tables**, and an**introduction to meta-analysis**. (ex. pg. 338) - A
**summary of ideas,****key terms,**and**multiple-choice and discussion questions****and answers**conclude each chapter to help students review the chapter materials. (ex. pg. 145) - A
**tabbed glossary**keyed to particular chapters follows the appendices. (ex. pg. 344)

**In this Section:**

1. Overview of Changes

2. Chapter-by-Chapter Changes

**1. Overview of Changes**

- The revised sample research report in Appendix A emphasizes the style in the sixth edition of the APA publication manual while ensuring that instructors will find reported the information they need to assess the originality and quality of their students’ research reports. (ex. pg. 303)
- All chapters and appendices have been tightened while adding some new box discussions and removing some previous ones, and new examples have been added throughout the book. (ex. pg. 191)
- In Chapter 12, there is a new section that explores what effect size indicators can tell us of practical importance. The particular focus of this discussion is on health-related statistics, but there are also tutorial discussions in the chapters on data analysis that focus on effect sizes, confidence intervals, and common misconceptions about the concept of statistical significance. (ex. pg. 230)
- Among other changes, the sample research proposal (in Chapter 2) has been updated. In Chapter 3, there is a new discussion on how ethical and scientific qualities can interact. In Chapter 4, there is additional emphasis on the issue of plausible rival interpretations. In Chapter 5, there is a new section on the measurement of implicit attitudes. In Chapter 7, the narrative discussion of randomized designs and causal inference has been rewritten. In Chapter 10, the authors propose a way of reporting modes to increase their informational value. In Chapter 12, there is a new section on the counternull statistic. (ex. pg. 236)

**2. Chapter-by-Chapter Changes**

**Chapter 2 From Hunches to Testable Hypotheses **

- Updated student’s sample proposal

**Chapter 4 Methods of Systematic Observation **

- Additional emphasis on the issue of plausible rival hypotheses and the third-variable problem as they relate to causal inference

**Chapter 5 Methods for Looking Within Ourselves **

- New section on the measurement of implicit attitudes

**Chapter 7 Randomized Experiments and Causal Inference **

- Tightened the narrative and removed the detailed discussion of the Solomon design

**Chapter 8 Nonrandomized Research and Causal Reasoning **

- New section on the explanation of the use of propensity scores

**Chapter 10 Summarizing the Data **

- New way of reporting modes to increase their informational value

**Chapter 11 Correlating Variables **

- Reformatted sequence in which different correlations are discussed to improve the flow of discussion

**Chapter 12 Understanding p Values and Effect Size Indicators **

- New section on the counternull statistic and another new section on what effect sizes can tell us of practical value

**Chapter 13 The Comparison of Two Conditions **

- Emphasizes Cohen’s
*d*as an effect size indicator with independent-sample and paired*t*tests.

**Chapter 14 Comparisons of More Than Two Conditions **

- More on the use of contrasts and effect sizes in comparisons of more than two conditions

**Chapter 15 The Analysis of Frequency Tables **

- Concludes with the binomial effect-size display (BESD), which had previously been in an earlier chapter

**In this Section:**

- Brief Table of Contents
- Full Table of Contents

- Chapter 1 Behavioral Research and the Scientific Method
- Chapter 2 From Hunches to Testable Hypotheses
- Chapter 3 Ethical Considerations and Guidelines

- Chapter 4 Methods of Systematic Observation
- Chapter 5 Methods for Looking Within Ourselves
- Chapter 6 Reliability and Validity in Measurement and Research

- Chapter 7 Randomized Experiments and Causal Inference
- Chapter 8 Nonrandomized Research and Causal Reasoning
- Chapter 9 Survey Research and Subject Recruitment

- Chapter 10 Summarizing the Data
- Chapter 11 Correlating Variables
- Chapter 12 Understanding p Values and Effect Size Indicators

- Chapter 13 The Comparison of Two Conditions
- Chapter 14 Comparisons of More Than Two Conditions
- Chapter 15 The Analysis of Frequency Tables

- Appendix A Reporting Your Research Results
- Appendix B Statistical Tables
- Appendix C Introduction to Meta-Analysis

**Chapter 1: Behavioral Research and the Scientific Method**- Preview Questions
- Why Study Research Methods and Data Analysis?
- What Alternatives Are There to the Scientific Method?
- How Do Scientists Use Empirical Reasoning?
- How Is Empirical Reasoning Used in Behavioral Research?
- How Do Extraempirical Factors Come Into Play?
- What Does Behavioral Science Cover?
- How Does Research Go From Descriptive to Relational to Experimental?
- What Are the Characteristics of Good Researchers?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 2: From Hunches to Testable Hypotheses**- Preview Questions
- What Is Meant by a Cycle of Discovery and Justification?
- What Are Hypothesis-Generating Heuristics?
- What Is the Potential Role of Serendipity
- How Can I Do a LiteratureSearch?
- How Should I Go About Defining Variables?
- What Identifies “Good” Theories and Working Hypotheses?
- What Is the Distinction Between an Independent Variable and Dependent Variable?
- What Belongs in My Research Proposal?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 3: Ethical Considerations and Guidelines**- Preview Questions
- How Do Ethical Guidelines in Research Function?
- What Is Informed Consent, and When Is It Used?
- How Are Ethics Reviews Done and Acted On?
- What Are Obstacles to the Rendering of “Full Justice”?
- How Can a “Relationship of Trust” Be Established?
- How Do Scientific Quality and Ethical Quality Intertwine?
- Is Deception in Research Ever Justified?
- What Is the Purpose of Debriefing, and How Is It Done?
- How Is Animal Research Governed by Ethical Rules?
- What Ethical Responsibilities Are There When Writing Up Research?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 4: Methods of Systematic Observation**- Preview Questions
- What Is Meant by Systematic Observation?
- How Do Researchers Simultaneously Participate and Observe?
- What Can Be Learned from Quantifying Observations?
- How Are Judgment Studies Done?
- How Does Content Analysis Work?
- How Are Situations Simulated in Controlled Settings?
- What Are Plausible Rival Hypotheses and the Third-Variable Problem?
- What Is the Distinction Between Reactive and Nonreactive Observation?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 5: Methods for Looking Within Ourselves**- Preview Questions
- What Are the Uses and Limitations of Self-Report Measures?
- What Are Open-Ended and Fixed-Choice Items?
- How Are Personality and Projective Tests Used?
- What Is Meant By Measuring Implicit Attitudes?
- What Are Numerical, Forced-Choice, and Graphic Ratings?
- What Are Rating Errors, and How Are They Controlled?
- What Is the Semantic Differential Method?
- What Are Likert Scales and Thurstone Scales?
- How Are Items Prepared for a Questionnaire or an Interview?
- How Are Face-to-Face and Telephone Interviews Done?
- How Are Behavioral Diaries Used in Research?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 6: Reliability and Validity in Measurement and Research**- Preview Questions
- What Is the Difference Between Validity and Reliability?
- What Are Random and Systematic Errors?
- What Is the Purpose of Retest and Alternate-Form Reliability?
- What Is Internal-Consistency Reliability, and How Is It Increased?
- What Is Acceptable Test-Retest and Internal-Consistency Reliability?
- How Is the Reliability of Judges Measured?
- How Is Reliability Related to Replication and External Validity?
- How Are Content and Criterion Validity Defined?
- How Is Construct Validity Assessed in Test Development?
- How Is Construct Validity Relevant to Experimental Design?
- What Is the Importance of Statistical-Conclusion Validity and Internal Validity?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 7: Randomized Experiments and Causal Inference**- Preview Questions
- What Is the Purpose of Randomized Experiments?
- How Is Random Assignment Accomplished?
- What Are Between-Subjects Designs?
- What Is the Formative Logic of Experimental Control
- What Are Within-Subjects Designs?
- What Are Factorial Designs?
- What Is Meant by Counterbalancing the Conditions?
- Why Is Causality Said To Be “Shrouded in Mystery”?
- How Do Scientists Logically Puzzle Out Efficient Causality?
- What Conditions Pose a Threat to Internal Validity?
- What Are Artifacts in Research?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 8: Nonrandomized Research and Causal Reasoning**- Preview Questions
- How Is Causal Reasoning Attempted in the Absence of Randomization?
- How Is the Third-Variable Problem Relevant?
- What Is Meant By Subclassification on Propensity Scores?
- What Are Time-Series Designs and “Found Experiments”?
- What Within-Subjects Designs Are Used in Single-Case Experiments?
- How Are Correlations Interpreted in Cross-Lagged Panel Designs?
- What Is the Purpose of Longitudinal Research Using Cohorts?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 9: Survey Research and Subject Recruitment**- Preview Questions
- What Are Opportunity and Probability Samples?
- What Is Meant by Bias and Instability in Survey Research?
- Why Do We Not Know “For Sure” the Bias in Sampling?
- How Is Simple Random Sampling Done?
- What Are Stratified Random Sampling and Area Probability Sampling?
- What Did the Literary Digest Case Teach Pollsters?
- What Are Point Estimates and Interval Estimates?
- What Are the Benefits of Stratification?
- How Is Nonresponse Bias Handled in Survey Research?
- What Are the Typical Characteristics of Volunteer Subjects?
- How Is Volunteer Bias in Opportunity Samples Managed?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 10: Summarizing the Data**- Preview Questions
- How Is Visual Integrity Ensured When Results Are Graphed?
- How Are Frequencies Displayed in Tables, Bar Graphs, and Line Graphs?
- How Do Stem-and-Leaf Charts Work?
- How Are Percentiles Used to Summarize Part of a Batch?
- How Is an Exploratory Data Analysis Done?
- How Does Asymmetry Affect Measures of Central Tendency?
- How Do I Measure How “Spread Out” a Set of Scores Is?
- What Are Descriptive and Inferential Measures?
- How Do I Estimate a Confidence Interval Around a Population Mean?
- What Is Distinctive About the Normal Distribution?
- Why Are z Scores Called Standard Scores, and How Are They Used?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 11: Correlating Variables**- Preview Questions
- What Are Different Forms of Correlations?
- How Are Correlations Visualized in Scatter Plots?
- How Is a Product-Moment Correlation Calculated?
- How Is Dummy Coding Used in Correlation?
- When Is the Phi Coefficient Used?
- How Is a Correlation Calculated on Ranks?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 12: Understanding p Values and Effect Size Indicators**- Preview Questions
- Why Is It Important to Focus Not Just on
*p*Values? - What Is the Reasoning Behind Null Hypothesis Significance Testing?
- What Is the Distinction Between Type I and Type II Error?
- What Are One-Tailed and Two-Tailed
*p*Values? - What Is the Counternull Statistic?
- What Is the Purpose of Doing a Power Analysis?
- How Do I Estimate a Confidence Interval for an Effect Size Correlation?
- What Can Effect Sizes Tell Us of Practical Importance?
- What Does Killeen’s
*p*_{rep}Tell Me? - Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 13: The Comparison of Two Conditions**- Preview Questions
- What Do Signal-to-Noise Ratios Have to Do With
*t*Tests? - How Do I Compute an Independent-Sample
*t*Test? - What Can a Table of
*p*Values for*t*Teach Me? - What Is an Effect Size Index for an Independent-Sample
*t*? - How Do I Interpret Cohen’s
*d*for Independent Groups? - How Do I Compute Interval Estimates for Cohen’s
*d*? - How Can I Maximize the Independent-Sample
*t*? - How Does a Paired
*t*Test Differ From an Independent-Sample*t*Test? - What Is an Effect Size Index for a Paired
*t*? - Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 14: Comparisons of More Than Two Conditions**- Preview Questions
- What Is Analysis of Variance (ANOVA), and How Are
*F*and*t*Related? - How Is Variability Apportioned in a One-Way ANOVA?
- How Are ANOVA Summary Tables Set Up and Interpreted?
- How Can I Test for Simple Effects After an Omnibus
*F*? - How Is Variability Apportioned in a Two-Way ANOVA?
- How Do I Interpret Main and Interaction Effects?
- How Is a Two-Way ANOVA Computed and a Summary Table Set Up?
- What Are Contrasts, and How Do I Compute Them On More Than Two Groups?
- What Do
*r*_{effect size r alerting}and*r*_{contrast}Tell Me? - How Are Contrasts on Multiple Repeated Measures Computed?
- How Are Latin Square Designs Analyzed?
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

**Chapter 15: The Analysis of Frequency Tables**- Preview Questions
- What Is the Purpose of Chi-Square (
*X*^{2})? - How Do I Compute 1-
*df*Chi-Squares? - How Do I Obtain the
*p*Value, Effect Size, and Confidence Interval? - What Is the Relationship Between 1
*df X*^{2}and Phi? - How Do I Deal With Tables Larger Than 2
*X*2? - How Is Standardizing the Margins Done, and What Can It Tell Me?
- What Is a Binomial Effect-Size Display Used For?
- A Journey Begun
- Summary of Ideas
- Key Terms
- Multiple-Choice Questions for Review
- Discussion Questions for Review
- Answers to Review Questions

- Research Reports in APA Style
- Getting Started
- Title Page
- Abstract
- Introduction
- Method
- Results
- Discussion
- References
- Footnotes
- Tables and Figures
- Appendix
- Writing and Revising

- B.1.
*z*Values and Their Associated One-Tailed*p*Values - B.2.
*t*Values and Their Associated One-Tailed and Two-Tailed*p*Values - B.3.
*F*Values and Their Associated p Values - B.4. r
^{2}Values and Their Associated p Values - B.5.
*r*Values and Their Associated p Values - B.6. Transformations of
*r*to Fisher*zr* - B.7. Transformations of Fisher
*zr*to*r*

- The Purpose of Meta-Analysis
- Some Pro and Con Arguments
- Comparing Two Effect Sizes
- Combining Two Effect Sizes
- Obtaining an Overall Significance Level
- Detective-Like Probing of Reported Data
- The File Drawer Problem

**Ralph L. Rosnow **is now Thaddeus Bolton Professor Emeritus at Temple University in Philadelphia, PA, where he taught courses in research methods and statistics for many years and directed the Ph.D. program in social and organizational psychology. He also taught research methods at Boston University in a master’s degree program in communication research and at Harvard University as a visiting professor in the psychology department.

**http://astro.temple.edu/~rosnow **

**Robert Rosenthal **is a Distinguished Professor at the University of California at Riverside and Edgar Pierce Professor of Psychology, Emeritus, Harvard University. In the realm of statistical data analysis, his special interests are in experimental design and analysis, contrast analysis, and meta-analysis. He served as co-chair of the Task Force on Statistical Inference of the American Psychological Association.