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Lab Manual for Psychological Research and Statistical Analysis
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Lab Manual for Psychological Research and Statistical Analysis

First Edition


October 2019 | 160 pages | SAGE Publications, Inc
Lab Manual for Psychological Research and Statistical Analysis serves as an additional resource for students and instructors in a research methods, statistics, or combined course where classroom and/or laboratory exercises are conducted. Packed with exercises, checklists, and how-to sections, this robust lab manual gives students hands-on guidance and practice for conducting and analyzing their own psychological research. Dawn M. McBride and J. Cooper Cutting provide students with additional opportunities for practice in a course with challenging material that requires practice and repetition for deeper understanding.
 
Introduction for Instructors
 
CHAPTER 1 • Psychological Research: The Whys and Hows of the Scientific Method and Statistics
1a: The Purpose of Statistics

 
1b: Science in the Media

 
1c: Understanding Your Data

 
1d: Displaying Distributions

 
1e: Making and Interpreting Graphs

 
1f: Setting up Your Data in SPSS: Creating a Data File

 
1g: Displaying Distributions in SPSS

 
 
CHAPTER 2 • Developing a Research Question and Understanding Research Reports
2a: How to Read Empirical Journal Articles

 
2b: Reading Journal Articles—Mueller and Oppenheimer (2014)

 
2c: Reading Journal Articles—Roediger and Karpicke (2006)

 
2d: Reviewing the Literature

 
2e: Creating References

 
2f: APA Style

 
2g: APA-Style Manuscript Checklist

 
 
CHAPTER 3 • Ethical Guidelines for Psychological Research
3a: Ethics

 
3b: Ethics in a Published Study

 
3c: Academic Honesty Guidelines—What Is (and Isn’t) Plagiarism

 
3d: Examples of Plagiarism

 
3e: Identifying and Avoiding Plagiarism

 
 
CHAPTER 4 • Probability and Sampling
4a: Distributions and Probability

 
4b: Basic Probability

 
4c: Subject Sampling

 
4d: Sampling

 
 
CHAPTER 5 • How Psychologists Use the Scientific Method: Data Collection Techniques and Research Designs
5a: Naturalistic Observation Group Activity

 
5b: Basics of Psychological Research

 
5c: Designing an Experiment Activity

 
5d: Research Design Exercise

 
5e: Design and Data Collection Exercise

 
 
CHAPTER 6 • Descriptive Statistics
6a: Central Tendency: Comparing Data Sets

 
6b: Understanding Central Tendency

 
6c: Central Tendency in SPSS

 
6d: Describing a Distribution (Calculations by Hand)

 
6e: More Describing Distributions

 
6f: Descriptive Statistics With Excel

 
6g: Measures of Variability in SPSS

 
 
CHAPTER 7 • Independent Variables and Validity in Research
7a: Identifying and Developing Hypotheses About Variables

 
7b: Independent and Dependent Variables

 
7c: Identifying Variables From Abstracts

 
7d: Identifying Variables From Empirical Articles

 
7e: Research Concepts: Designs, Validity, and Scales of Measurement

 
7f: Internal and External Validity

 
 
CHAPTER 8 • One-Factor Experiments
8a: Bias and Control Exercise

 
8b: Experimental Variables

 
8c: Experiments Exercise

 
8d: Experimental Designs

 
 
CHAPTER 9 • Hypothesis-Testing Logic
9a: Inferential Statistics Exercise

 
9b: Calculating z Scores Using SPSS

 
9c: The Normal Distribution

 
9d: z Scores and the Normal Distribution

 
9e: Hypothesis Testing With Normal Populations

 
9f: Hypothesis Testing With z Tests

 
 
CHAPTER 10 • t Tests
10a: Hypothesis Testing With a Single Sample

 
10b: One-Sample t Test in SPSS

 
10c: One-Sample t Tests by Hand

 
10d: Related-Samples t Tests

 
10e: Related-Samples t Test in SPSS

 
10f: Independent Samples t Tests

 
10g: Hypothesis Testing—Multiple Tests

 
10h: More Hypothesis Tests With Multiple Tests

 
10i: t Tests Summary Worksheet

 
10j: Choose the Correct t Test

 
10k: Writing a Results Section From SPSS Output—t Tests

 
 
CHAPTER 11 • One-Way Analysis of Variance
11a: One-Way Between-Subjects Analysis of Variance (Hand Calculations)

 
11b: One-Way Between-Subjects Analysis of Variance in SPSS

 
11c: Writing a Results Section From SPSS Output—Analysis of Variance

 
11d: Inferential Statistics and Analyses

 
 
CHAPTER 12 • Correlation Tests and Simple Linear Regression
12a: Creating and Interpreting Scatterplots

 
12b: Understanding Correlations

 
12c: Correlations and Scatterplots in SPSS

 
12d: Computing Correlations by Hand

 
12e: Hypothesis Testing With Correlation Using SPSS

 
12f: Regression

 
 
CHAPTER 13 • Chi-Square Tests
13a: Chi-Square Crosstabs Tables

 
13b: Chi-Square Hand Calculations From Crosstabs Tables

 
13c: Chi-Square in SPSS—Type in the Data

 
13d: Chi-Square in SPSS From a Data File

 
 
CHAPTER 14 • Multifactor Experiments and Two-Way Analysis of Variance (Chapters 14 and 15)
14a: Factorial Designs

 
14b: Factorial Designs Article—Sproesser, Schupp, and Renner (2014)

 
14c: Factorial Designs Article—Farmer, McKay, and Tsakiris (2014)

 
14d: Describing Main Effects and Interactions

 
14e: Factorial Analysis of Variance

 
14f: Analysis of Variance Review

 
14g: Main Effects and Interactions in Factorial Analysis of Variance

 
 
CHAPTER 15 • One-Way Within-Subjects Analysis of Variance
15a: One-Way Within-Subjects Analysis of Variance

 
15b: One-Way Within-Subjects Analysis of Variance in SPSS

 
15c: One-Way Within-Subjects Analysis of Variance Review

 
 
CHAPTER 16 • Meet the Formulae and Practice Computation Problems
16a: Meet the Formula and Practice Problems: z Score Transformation

 
16b: Meet the Formula and Practice Problems: Single-Sample z Tests and t Tests

 
16c: Meet the Formula and Practice Problems: Comparing Independent Samples and Related Samples t Tests

 
16d: Meet the Formula and Practice Problems: One-Factor Between-Subjects Analysis of Variance

 
16e: Meet the Formula and Practice Problems: Two-Factor Analysis of Variance

 
16f: Meet the Formula and Practice Problems: One-Factor Within-Subjects Analysis of Variance

 
16g: Meet the Formula and Practice Problems: Correlation

 
16h: Meet the Formula and Practice Problems: Bivariate Regression

 
 
Appendix A. Data Sets and Activities
A1: Data Analysis Exercise—von Hippel, Ronay, Baker, Kjelsaas, and Murphy (2016)

 
A2: Data Analysis Exercise—Nairne, Pandeirada, and Thompson (2008)

 
A3: Data Analysis Project—Crammed vs. Distributed Study

 
A4: Data Analysis Project—Teaching Techniques Study

 
A5: Data Analysis Project—Distracted Driving Study

 
A6: Data Analysis Project—Temperature and Air Quality Study

 
A7: Data Analysis Project—Job Type and Satisfaction Study

 
A8: Data Analysis Project—Attractive Face Recognition Study

 
A9: Data Analysis Project—Discrimination in the Workplace Study

 
 
Appendix B. Overview and Selection of Statistical Tests
B1: Finding the Appropriate Inferential Test

 
B2: Finding the Appropriate Inferential Test From Research Designs

 
B3: Finding the Appropriate Inferential Test From Research Questions

 
B4: Identifying the Design and Finding the Appropriate Inferential Test From Abstracts

 
B5: Identifying Variables and Determining the Inferential Test From Abstracts

 
 
Appendix C. Summary of Formulae
 
References

For instructors

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