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Introduction to Real World Statistics: With Step-By-Step SPSS Instructions

✍ Scribed by Edward T. Vieira Jr.


Publisher
Routledge
Year
2017
Tongue
English
Leaves
758
Category
Library

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No coin nor oath required. For personal study only.

✦ Synopsis


Introduction to Real World Statistics provides students with the basic concepts and practices of applied statistics, including data management and preparation; an introduction to the concept of probability; data screening and descriptive statistics; various inferential analysis techniques; and a series of exercises that are designed to integrate core statistical concepts. The author’s systematic approach, which assumes no prior knowledge of the subject,equips student practitioners with a fundamental understanding of applied statistics that can be deployed across a wide variety of disciplines and professions.

Notable features include:

    • short, digestible chapters that build and integrate statistical skills with real-world applications, demonstrating the flexible usage of statistics for evidence-based decision-making
      • statistical procedures presented in a practical context with less emphasis on technical jargon
        • early chapters that build a foundation before presenting statistical procedures
          • SPSS step-by-step detailed instructions designed to reinforce student understanding
            • real world exercises complete with answers
              • chapter PowerPoints and test banks for instructors.

                ✦ Table of Contents


                Cover
                Half Title
                Title Page
                Copyright Page
                Dedication
                Table of Contents
                Preface
                Why Read This Book?
                Notable Features
                Assumes No Prior Knowledge of Statistics
                Short Digestible Chapters That Build and Integrate Real World Statistical Skills
                An Alternative to the Traditional Hypothesis Testing Approach
                Interdisciplinary Applications
                SPSS Step-by-Step Detailed Instructions with Screenshots
                Chapter PowerPoints and Test Bank
                A Systematic Approach to Teaching Statistics
                Book Organization
                Acknowledgments
                Part I: Getting Started
                1 Introduction to Real World Statistics
                Learning Objectives
                1.1 What Is Statistics?
                Sample Data vs. Census Data
                1.2 Reification
                1.3 NaΓ―ve Science: The Deception of Common Sense
                Real World Snapshot
                1.4 Importance of Statistics
                Statistical Assumptions
                Summary of Key Concepts
                Introductory Applied Exercises
                2 Statistics: Descriptive, Correlation, and Inferential
                Learning Objectives
                2.1 Introduction to Descriptive, Correlation, and Inferential Statistics
                2.2 Descriptive Statistics
                Measures of Variation
                2.3 Correlation Statistics
                2.4 Inferential Statistics
                Real World Snapshot
                2.5 Descriptive, Correlation, and Inferential Statistics
                Summary of Key Concepts
                Descriptive, Correlation, and Inferential Statistics Applied Exercises
                3 Data and Types of Variables
                Learning Objectives
                3.1 Introduction to Variables
                3.2 Kinds of Variables
                3.3 Variables by Type of Data
                Categorical Data
                Binary-Level Data (Variable)
                Nominal-Level Data (Variable)
                Ordinal-Level Data (Variable)
                Numeric Data
                Ratio-Level Data (Variable)
                Interval-Level Data (Variable)
                Scale Response Formatted Variables: A Special Case
                Appropriate Analysis for Variable (Data) Type
                Real World Snapshot
                3.4 Variables by Influence
                Independent Variables (Predictors)
                Dependent Variables (Outcomes)
                Control Variables
                Interaction Variables
                Summary of Key Concepts
                Variables Applied Exercises
                4 SPSS Statistics Data Management Basics: Preparing Data for Analysis
                Learning Objectives
                4.1 Introduction to SPSS and Data, Output, and Syntax Files
                4.2 Setting up the Data File
                4.3 Key SPSS Data Management Tools
                4.4 Opening SPSS
                4.5 Formatting the Variables’ Data
                Name
                Type
                Width
                Decimals
                Label
                Values
                Missing
                Column
                Align
                Measure
                Role
                4.6 The SPSS Data File
                Data Access
                Manual Entry
                Opening an Existing SPSS Data File
                Opening Other Formatted Spreadsheet Data Files
                Text Files
                Cut and Paste
                Saving the Data File
                Saving Data in SPSS
                Saving Data in Other Spreadsheet Formats
                4.7 The SPSS Output File
                Creating a New SPSS Output File
                Opening an Existing SPSS Output File
                Displaying the Full P-Value in the Output File
                Saving an SPSS Output File
                Saving Output for the SPSS Output Viewer
                Saving SPSS Output in Another Format
                4.8 A Brief Review of the Syntax File
                4.9 Creating a Codebook
                Creating a Codebook from Scratch
                Real World Snapshot
                The SPSS Codebook
                Summary of Key Concepts
                Data Management Applied Exercises
                Part II: Sampling Considerations
                5 Sampling Strategies
                Learning Objectives
                5.1 Introduction to the Sampling Process
                5.2 Probability Sampling
                Random vs. Representative Sampling
                Random Sampling and the Shape of Data Distribution
                Simple Random Sampling
                Systematic Random Sampling
                Cluster (Random) Sampling
                Stratified Random Sampling
                Real World Snapshot
                5.3 Nonprobability Sampling
                Convenience Sampling
                Expert Sampling
                Quota Sampling
                Snowball Sampling
                Summary of Key Concepts
                Sampling Applied Exercises
                6 Sample Size
                Learning Objectives
                6.1 Introduction to Sample Size
                Numeric Data
                Central Limit Theorem
                Categorical Data
                Other Considerations
                6.2 Power Analysis and Sample Size
                Finite Population Correction
                Informed Power Analysis
                Real World Snapshot
                Comparison of Unequal Sample Sizes
                Data Assumptions
                6.3 Examples Using SPSS: Step-by-Step Instructions
                Example 6.1: Means: One-sample t-test that mean = specific value
                Interpretation
                Example 6.2: Means: Paired t-test that mean = 0
                Interpretation
                Example 6.3: Proportions: One-sample test that proportion = β€œ.50”
                Interpretation
                Example 6.4: Proportions: 2 Γ— 2 for independent samples (chi-square or Fisher’s exact test)
                Interpretation
                Example 6.5: Correlations: One-sample test that correlation = 0
                Interpretation
                Example 6.6: ANOVA: One-way analysis of variance
                Interpretation
                Example 6.7: Regression: One set of predictors
                Interpretation
                Example 6.8: Clustering
                Interpretation
                Summary of Key Concepts
                Sample Size Applied Exercises
                7 Sources and Types of Statistical Error
                Learning Objectives
                7.1 Introduction to Sources of Statistical Error
                Real World Snapshot
                7.2 Sampling Error
                Sampling Random Error
                Sampling Systematic Error
                7.3 Nonsampling Error
                Nonsampling Random Error
                Nonsampling Systematic Error
                Summary of Key Concepts
                Statistical Error Applied Exercises
                8 Missing Data
                Learning Objectives
                8.1 Introduction to Missing Data
                8.2 Missing Value (Data) Analysis
                Real World Snapshot
                8.3 Methods for Replacing Missing Values
                Listwise (Casewise)
                Pairwise
                Series Mean
                Mean of Nearby Points
                Median of Nearby Points
                Linear Interpolation
                Linear Trend at Point
                8.4 New Data Replacement Methods
                Expectation Maximization
                Multiple Imputation
                8.5 Examples Using SPSS: Step-by-Step Instructions
                Example 8.1: The MCAR Case
                Interpretation
                Write-Up
                Example 8.2: The NMAR Case
                Interpretation
                Write-Up
                Summary of Key Concepts
                Missing Data Applied Exercises
                Part III: Data Screening, Describing, and Probabilities
                9 Describing Categorical Variables
                Learning Objectives
                9.1 Introduction to Describing Categorical Variables
                Real World Snapshot
                9.2 Charting Categorical Variables
                Pie Chart
                Dichotomous (Two-Category) Pie Chart
                Example 9.1: A Pie Chart with Two Categories
                Describing and Reporting
                Multiple Category Pie Chart
                Example 9.2: A Pie Chart with More Than Two Categories
                Describing and Reporting
                Bar Chart
                Example 9.3: A Bar Chart with More Than Two Categories
                Describing and Reporting
                9.3 Categorical Variable Tables
                Single Variable Tables
                Example 9.4: A Single Categorical Variable with Two Categories Table
                Describing and Reporting
                Example 9.5: A Single Categorical Variable with More Than Two Categories Table
                Describing and Reporting
                Multiple Variable Tables
                Two Variables
                Example 9.6: Two Categorical Variables Each with Two or More Categories Table
                Describing and Reporting
                Three Variables
                Example 9.7: Three Categorical Variables Each with Two or More Categories Table
                Describing and Reporting
                Summary of Concepts
                Describing Categorical Variables Applied Exercises
                10 Basic Probabilities for Categorical Variables
                Learning Objectives
                10.1 Introduction to Basic Probability
                10.2 Assumptions
                Real World Snapshot
                10.3 Simple (Marginal) Probability
                10.4 Joint Probability
                10.5 Conditional Probability
                10.6 Tables
                10.7 Multiplication Rule in Probability
                10.8 Addition Rule in Probability
                Summary of Key Concepts
                Categorical Data Probability Applied Exercises
                11 The Concepts of Data Distribution, Probability Values, and Significance Testing
                Learning Objectives
                11.1 Introduction to Data Distribution and Probability
                11.2 Numerical Data Distribution
                Standard Deviation and the Normal Distribution
                Real World Snapshot
                Z-Distribution and Z-Scores
                T-Distribution
                Probability Based on the Normal Distribution
                Probability Value (P-Values)
                Level of Significance (Alpha) and Significance Testing
                11.3 Categorical Data Distribution
                The Chi-Square Significance Test
                Degrees of Freedom
                Two Types of Expected Observations
                Probability (P-Values) Based on the Chi-Square Distribution
                11.4 Confidence Intervals
                11.5 Conclusion
                Summary of Key Concepts
                Distribution and Significance Testing Applied Exercises
                12 Numeric Variables: Data Screening and Removing Outliers
                Learning Objectives
                12.1 Introduction to Numeric Data Screening and Removing Outliers
                Real World Snapshot
                12.2 Measuring Central Tendency
                Mean
                Median
                Mode
                Coefficient of Skewness
                12.3 Measuring Dispersion
                Range
                Variance
                Standard Deviation
                Coefficient of Variation
                Coefficient of Kurtosis
                12.4 Screening Data: Identifying and Removing Outliers
                Outliers
                Visual Assessment
                Statistical Measures
                Methods for Identifying and Removing Outliers
                Simple Outlier Removal
                Standard Deviation Rule
                Trimming or Truncating
                Winsorizing
                Outlier Labeling Rule
                Data Removal and Analysis
                Data Screening and the Removal of Outliers Assumptions
                12.5 Examples Using SPSS: Step-by-Step Instructions
                Example 12.1: Simple Outlier Removal
                SPSS Output Interpretation
                Example 12.2: Outlier Labeling Rule Removal
                SPSS Output Interpretation
                12.6 Other Remedies for Non-Normal Data Distribution
                Summary of Key Concepts
                Numeric Data Screening and Removing Outliers Applied Exercises
                Part IV: Statistical Analysis
                Categorical Variables
                13 Chi-Square Goodness of Fit Test: Comparing Counts in a Single Variable with Two or More Categories
                Learning Objectives
                13.1 Introduction to the Chi-Square Goodness of Fit Test
                13.2 Calculating and Understanding the Chi-Square Statistic
                Real World Snapshot
                13.3 Data Assumptions
                13.4 Examples Using SPSS: Step-by-Step Instructions
                Example 13.1: Equal Expected Counts: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Chi-Square Goodness of Fit Test Analysis
                Reporting Results
                Write-Up
                Example 13.2: Equal Expected Counts: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Chi-Square Goodness of Fit Test Analysis
                Reporting Results
                Write-Up
                Example 13.3: Specified Expected Counts: Both Cases
                SPSS Output Interpretation
                Data Screening
                Chi-Square Goodness of Fit Analysis
                Reporting Significant Results
                Write-Up
                Reporting Nonsignificant Results
                Write-Up
                Summary of Key Concepts
                Chi-Square Goodness of Fit Test Applied Exercises
                14 Chi-Square Test of Independence: Comparing Counts between Two Variables Each with Two or More Categories
                Learning Objectives
                14.1 Introduction to the Chi-Square Test of Independence
                14.2 Calculating and Understanding the Chi-Square Test of Independence
                14.3 Data Assumptions
                Real World Snapshot
                14.4 Examples Using SPSS: Step-by-Step Instructions
                Example 14.1: A 2 Γ— 2 Chi-Square Test of Independence: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Chi-Square Test of Independence Analysis
                Reporting Results
                Write-Up
                Example 14.2: A 2 Γ— 2 Chi-Square Test of Independence: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Chi-Square Test of Independence Analysis
                Reporting Results
                Write-Up
                Example 14.3: A 3 Γ— 5 Chi-Square Test of Independence: Both Cases
                SPSS Output Interpretation
                Data Screening
                Chi-Square Test of Independence Analysis
                Reporting Significant Results
                Write-Up
                Reporting Nonsignificant Results
                Write-Up
                Summary of Key Concepts
                Chi-Square Test of Independence Applied Exercises
                15 Chi-Square Test of the Same Sample: Comparing Counts of the Same Sample Measured Twice Using a Categorical Variable
                Learning Objectives
                15.1 Introduction to the Same Sample Measured Twice Using a Categorical Variable
                15.2 Data Assumptions
                Real World Snapshot
                15.3 Examples Using SPSS: Step-by-Step Instructions
                Example 15.1: A Crosstabs 2 Γ— 2 Repeated Measures McNemar Test: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Chi-Square Test for Repeated Counts Analysis
                Reporting Results
                Write-Up
                Example 15.2: A Crosstabs 2 Γ— 2 Repeated Measures McNemar Test: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Chi-Square Test for Repeated Counts Analysis
                Reporting Results
                Write-Up 224
                Example 15.3: A Crosstabs 4 x2 Repeated Measures McNemar-Bowker Test: Both Cases
                SPSS Output Interpretation
                Data Screening
                Chi-Square Test for Repeated Counts Analysis
                Reporting Significant Results
                Write-Up
                Reporting Nonsignificant Results
                Write-Up
                Summary of Key Concepts
                Chi-Square Test of Two Related Samples Measured Twice Applied Exercises
                Numeric Variables
                16 T-Test: Comparing a Single Sample Mean to a Specific Value
                Learning Objectives
                16.1 Introduction to the Single Sample T-Test
                16.2 Confidence Interval for a Single Sample T-Test
                Real World Snapshot
                16.3 Data Assumptions
                16.4 Examples Using SPSS: Step-by-Step Instructions
                Example 16.1: Single Sample T-Tests: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Single Sample T-Test Analysis
                Reporting Results
                Write-Up 238
                Example 16.2: Single Sample T-Tests: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Single Sample T-Test Analysis
                Reporting Results
                Write-Up
                Summary of Key Concepts
                16.5 Single Sample T-Test Applied Exercises
                17 T-Test: Comparing Two Independent Samples’ Variable Means
                Learning Objectives
                17.1 Introduction to the Two Independent Samples T-Test
                17.2 Equality of Variance
                Real World Snapshot 246
                Pooled or Separate Two Independent Samples T-Test
                17.3 Data Assumptions
                17.4 Examples Using SPSS: Step-by-Step Instructions
                Example 17.1: Two Independent Samples T-Tests: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Two Independent Samples T-Test Analysis
                Reporting Results
                Write-Up
                Example 17.2: Two Independent Samples T-Tests: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Two Independent Samples T-Test Analysis
                Reporting Results
                Write-Up
                Summary of Key Concepts
                Two Independent Samples T-Test Applied Exercises
                18 Analysis of Variance (ANOVA): Comparing More Than Two Independent Samples’ Means to Test for Differences among Them by One Type of Classification
                Learning Objectives
                18.1 Introduction to One-Way ANOVA
                18.2 Variance
                Real World Snapshot
                18.3 Data Assumptions
                18.4 Strategies for Addressing Violations of Assumptions
                18.5 Examples Using SPSS: Step-by-Step Instructions
                Example 18.1: ANOVA F-Test: The Significant Case
                SPSS Output Interpretation
                Data Screening
                ANOVA (Analysis)
                Reporting Results
                Write-Up
                Example 18.2: ANOVA F-Test: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                ANOVA (Analysis)
                Reporting Results
                Write-Up
                Summary of Key Concepts
                One-Way ANOVA F-Test Applied Exercises
                19 Paired T-Test: Comparing the Means of the Same Sample Measured Twice Using a Numeric Variable
                Learning Objectives
                19.1 Introduction to the Paired-Sample T-Test
                19.2 Paired T-Test Calculations
                Real World Snapshot 275
                19.3 Data Assumptions
                19.4 Examples Using SPSS: Step-by-Step Instructions
                Example 19.1: Paired-Sample T-Tests: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Paired-Sample T-Test Analysis
                Reporting Results
                Write-Up
                Example 19.2: Single Sample T-Tests: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Paired-Sample T-Test Analysis
                Reporting Results
                Write-Up
                Summary of Key Concepts
                Paired-Samples T-Test Applied Exercises
                20 General Linear Model Repeated Measures: Comparing Means of the Same Sample Measured More Than Twice Using a Numeric Variable
                Learning Objectives
                20.1 Introduction to General Linear Model Repeated Measures
                Real World Snapshot
                20.2 Data Assumptions
                20.3 Strategies for Addressing Violations of Assumptions
                20.4 Examples Using SPSS: Step-by-Step Instructions
                Example 20.1: General Linear Model Repeated Measures: The Significant Case
                SPSS Output Interpretation
                Data Screening
                General Linear Model Repeated Measures Analysis
                Reporting Results
                Write-Up
                Example 20.2: General Linear Model Repeated Measures: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                General Linear Model Repeated Measures Analysis
                Reporting Results
                Write-Up
                Summary of Key Concepts
                General Linear Model Repeated Measures Applied Exercises
                21 Correlation Analysis: Looking for an Association between Two Variables
                Learning Objectives
                21.1 Introduction to Pearson, Spearman, and Partial Bivariate Correlations
                Explained Variance (r2)
                21.2 Strength and Directionality of Correlations
                Correlation Strength
                Correlation Directionality
                Linear Correlation Strength and Directionality Together
                21.3 Calculating a Correlation for Numeric Data
                Real World Snapshot
                21.4 Types of Correlations
                21.5 General Data Assumptions
                21.6 Examples Using SPSS: Step-by-Step Instructions
                Example 21.1: Pearson Correlation: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Pearson Correlation Analysis
                Reporting Results
                Write-Up
                Example 21.2: Pearson Correlation: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Pearson Correlation Analysis
                Reporting Results
                Write-Up
                Example 21.3: Spearman Correlation: Both Cases
                SPSS Output Interpretation
                Data Screening
                Spearman Correlation Analysis
                Reporting Significant Results
                Write-Up
                Reporting Nonsignificant Results
                Write-Up
                Example 21.4: Partial Correlation: Both Cases
                SPSS Output Interpretation
                Data Screening
                Partial Correlation Analysis
                Reporting Nonsignificant Results
                Write-Up
                Reporting Significant Results
                Write-Up
                Summary of Key Concepts
                Correlation Analysis Applied Exercises
                22 Single Linear Regression
                Learning Objectives
                22.1 Introduction to Single Linear Regression
                Prediction vs. Cause and Effect
                22.2 Prediction Model
                Applying the Prediction Model
                Standardized Regression Coefficients
                Real World Snapshot
                22.3 Data Assumptions
                Testing Data Assumptions
                22.4 Examples Using SPSS: Step-by-Step Instructions
                Example 22.1: Single Linear Regression: The Significant Case
                SPSS Output Interpretation
                Data Screening
                Single Linear Regression Analysis
                Reporting Results
                Write-Up
                Example 22.2: Single Linear Regression: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                Single Linear Regression Analysis
                Reporting Results
                Write-Up
                Summary of Key Concepts
                Single Linear Regression Applied Exercises
                23 Multiple Linear Regression
                Learning Objectives
                23.1 Introduction to Multiple Linear Regression
                23.2 Prediction Model
                R-Square and Adjusted R-Square
                Real World Snapshot
                23.3 Data Assumptions
                23.4 Examples Using SPSS: Step-by-Step Instructions
                Example 23.1: Multiple Linear Regression: The Significant Case
                SPSS Output Interpretation
                Data Screening
                MLR Analysis
                Reporting Results
                Write-Up
                Example 23.2: Multiple Linear Regression: The Nonsignificant Case
                SPSS Output Interpretation
                Data Screening
                MLR Analysis
                Reporting Results
                Write-Up
                Summary of Key Concepts
                Multiple Linear Regression Applied Exercises
                Appendices
                Appendix A: Glossary
                Appendix B: Chapter Statistical Exercise Solutions
                B.1 Chapter 1
                B.2 Chapter 2
                B.3 Chapter 3
                B.4 Chapter 4
                B.5 Chapter 5
                B.6 Chapter 6
                B.7 Chapter 7
                B.8 Chapter 8
                B.9 Chapter 9
                B.10 Chapter 10
                B.11 Chapter 11
                B.12 Chapter 12
                B.13 Chapter 13
                B.14 Chapter 14
                B.15 Chapter 15
                B.16 Chapter 16
                B.17 Chapter 17
                B.18 Chapter 18
                B.19 Chapter 19
                B.20 Chapter 20
                B.21 Chapter 21
                B.22 Chapter 22
                B.23 Chapter 23
                Appendix C: Case Studies and Solutions
                C.1 Case Study Questions
                Financial Attributes
                Gift Shop Customers
                Health Issues
                Moving Services
                Sample Size Matters
                Violent Crime Recidivism
                What Motivates Students to Perform
                Psychological Effects of the Workplace
                C.2 Case Study Solutions
                Financial Attributes
                Gift Shop Customers
                Health Issues
                Moving Services
                Sample Size Matters
                Violent Crime Recidivism
                What Motivates Students to Perform
                Psychological Effects of the Workplace
                Appendix D: Research Goal and Objectives
                D.1 Research Goal
                D.2 Research Objectives
                Developing and Testing Research Statements
                Developing and Answering Research Questions
                D.3 The Interconnected Parts of Research Goals and Objectives
                Appendix E: Types of Research Design
                E.1 Introduction to Research Designs
                E.2 Survey or Self-Report Research Design
                Person-to-Person Administered Survey
                Self-Administered Survey
                E.3 Experimental Research Design
                Cause and Effect Relationship
                Lab Experiment
                Field Experiment
                Manipulation Check
                External Influences
                Managing the Effects of Unaccounted for Extraneous Variables
                The Experimental Design Process Model
                E.4 Observational Research Design
                Personal Observation
                Mechanical Observation
                Content Analysis
                E.5 Other Research Designs
                Single Time vs. Repeated Measures Designs
                Cross-Sectional Design
                Longitudinal Design
                Mixed Research Designs
                Appendix F: Comparing Counts of the Same Sample Measured More Than Twice Using a Categorical Variable
                F.1 A Categorical Variable Measured More Than Twice Using the Same Sample
                F.2 Data Assumptions
                Appendix G: More on Linear Regression
                G.1 Introduction to Other Tools in Regression Analysis
                G.2 The Influence of Outliers on Linear Regression Results
                G.3 Linear Regression Methods
                Stepwise
                Hierarchical
                G.4 Dummy Coding
                G.5 Interaction Terms (Variables)
                G.6 Residual Analysis
                G.7 Multicollinearity
                Appendix H: Statistics Flow Chart
                References
                Index


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