Image from Coce

Essential statistics for the social and behavioral sciences : a conceptual approach / Anthony Walsh, Jane C. Ollenburger.

By: Contributor(s): Material type: TextTextPublisher: Upper Saddle River, NJ : Prentice Hall, 2001Description: xii, 305 pages : illustrations ; 24 cmContent type:
  • text
Media type:
  • unmediated
Carrier type:
  • volume
ISBN:
  • 0130193399
  • 9780130193391
Other title:
  • Essential statistics for the social and behavioural sciences
  • Essential statistics for the social and behavioural sciences : A conceptual approach
Subject(s): DDC classification:
  • 300.727
LOC classification:
  • HA29. W33573 2001
Contents:
Preface -- Chapter 1. Introduction to Statistical Analysis -- Why Study Statistics? -- Thinking Statistically -- Descriptive and Inferential Statistics -- Descriptive Statistics -- Inferential Statistics -- Statistics and Error -- Parametric and Nonparametric Statistics -- Operationalization -- Reliability and Validity -- Measurement -- Dependent and Independent Variables -- Nominal Level -- Ordinal Level -- Interval Level -- Ratio Level -- The Role of Statistics in Science -- Summary -- Practice Application: Variables and Levels of Measurement -- Problems -- Chapter 2. Presenting and Summarizing Data -- Types of Frequency Distributions -- Interpreting Cumulative Frequencies -- Frequency Distribution of Grouped Data -- Limits, Sizes, and Midpoints of Class Intervals -- Advantages and Disadvantages of Grouping Data -- Bar Graphs and Pie Charts -- Histograms and Frequency Polygons -- Numerical Summation of Data: Percentages, Proportions, and Ratios -- Summary -- Practice Application: Displaying and Summarizing Data -- Problems -- Chapter 3. Central Tendency and Dispersion -- Measures of Central Tendency -- Mode -- Median -- Computing the Median with Grouped Data -- The Mean -- Computing the Mean from Grouped Data -- A Research Example -- Choosing a Measure of Central Tendency -- Measures of Dispersion -- Range -- Standard Deviation -- Computational Formula for s -- Variability and Variance -- Computing the Standard Deviation from Grouped Data -- Coefficient of Variation -- Index of Qualitative Variation -- Summary -- Practice Application: Central Tendency and Dispersion -- Reference -- Problems -- Chapter 4. Probability and the Normal Curve -- Probability -- The Multiplication Rule -- The Addition Rule -- Theoretical Probability Distributions -- The Normal Curve -- Different Kinds of Curves -- The Standard Normal Curve -- The z Scores -- Finding Area of the Curve Below the Mean -- Summary -- Practice Application: The Normal Curve and z Scores -- Reference -- Problems -- Chapter 5. The Sampling Distribution and Estimation Procedures -- Sampling -- Simple Random Sampling -- Stratified Random Sampling -- The Sampling Distribution -- The Central Limit Theorem -- Standard Error of the Sampling Distribution -- Point and Interval Estimates -- Confidence Intervals and Alpha Levels -- Calculating Confidence Intervals -- Sampling and Confidence Intervals -- Interval Estimates for Proportions -- Estimating Sample Size -- Estimating Sample Size for Proportions -- Summary -- Practice Application: The Sampling Distribution and Estimation -- Problems -- Chapter 6. Hypothesis Testing: Interval/Ratio Data -- The Logic of Hypothesis Testing -- The Evidence and Statistical Significance -- Errors in Hypothesis Testing -- One Sample z Test -- Decision Rule -- The t Test -- Degrees of Freedom -- The t Distribution -- Directional Hypotheses: One- and Two-Tailed Tests -- Computing t -- t Test for Correlated (Dependent) Means -- Effects of Sample Variance on H[subscript 0] Decision -- Large Sample t Test: A Computer Example -- Interpreting the Printout -- Calculating t with Unequal Variances -- Testing Hypotheses for Single-Sample Proportions -- Statistical Versus Substantive Significance, and Strength of Association -- Summary -- Practice Application: t Test -- Problems -- Chapter 7. Analysis of Variance -- Assumptions of Analysis of Variance -- The Basic Logic of ANOVA -- The Idea of Variance Revisited -- The Advantage of ANOVA over Multiple Tests -- The F Distribution -- An Example of ANOVA -- Determining Statistical Significance: Mean Square and the F Ratio -- ETA Squared -- Multiple Comparisons: The Scheffe Test -- Two-Way Analysis of Variance -- Determining Statistical Significance -- Significance Levels -- Understanding Interaction -- A Research Example of a Significant Interaction Effect -- Summary -- Practice Application -- Problems -- Chapter 8. Hypothesis Testing with Categorical Data: Chi-Square Test -- Table Construction -- Putting Percentages in Tables -- Assumptions for the Use of Chi-Square -- The Chi-Square Distribution -- Yates' Correction for Continuity -- Chi-Square Distribution and Goodness of Fit -- Chi-Square-Based Measures of Association -- Sample Size and Chi-Square -- Contingency Coefficient -- Cramer's V -- A Computer Example of Chi-Square -- Kruskal-Wallis One-Way Analysis of Variance -- Summary -- Practice Application: Chi-Square -- Reference -- Problems -- Chapter 9. Nonparametric Measures of Association -- The Idea of Association -- Does an Association Exist? -- What Is the Strength of the Association? -- What Is the Direction of the Association? -- Proportional Reduction in Error -- The Concept of Paired Cases -- A Computer Example -- Gamma -- Lambda -- Somer's d -- Tau-B -- The Odd's Ratio and Yule's Q -- Spearman's Rank Order Correlation -- Which Test of Association Should We Use? -- Summary -- Practice Application: Nonparametric Measures of Association -- Reference -- Problems -- Chapter 10. Elaboration of Tabular Data -- Causal Analysis -- Criteria for Causality -- Association -- Temporal Order -- Spuriousness -- Necessary Cause -- Sufficient Cause -- Necessary and Sufficient Cause -- A Statistical Demonstration of Cause-and-Effect Relationships -- Multivariate Contingency Analysis -- Introducing a Third Variable -- Explanation and Interpretation -- Illustrating Elaboration Outcomes -- Controlling for One Variable -- Further Elaboration: Two Control Variables -- Partial Gamma -- When Not to Compute Partial Gamma -- Problems with Tabular Elaboration -- Summary -- Practice Application: Bivariate Elaboration -- Reference -- Problems -- Chapter 11. Bivariate Correlation and Regression -- Preliminary Investigation: The Scattergram -- The Slope -- The Intercept -- The Pearson Correlation Coefficient -- Covariance and Correlation -- Partitioning r Squared and Sum of Squares -- Standard Error of the Estimate -- Standard Error of r -- Significance Testing for Pearson's r -- The Interrelationship of b, r, and [beta] -- Summarizing Properties of r, b, and [beta] -- Summarizing Prediction Formulas -- A Computer Example of Bivariate Correlation and Regression -- Practice Application: Bivariate Correlation and Regression -- Practice Application: Bivariate Correlation and Regression -- Reference -- Problems -- Chapter 12. Multivariate Correlation and Regression -- Partial Correlation -- Computing Partial Correlations -- Computer Example and Interpretation -- Second-Order Partials: Controlling for Two Independent Variables -- The Multiple Correlation Coefficient -- Multiple Regression -- The Unstandardized Partial Slope -- The Standardized Slope ([beta]) -- A Computer Example of Multiple Regression and Interpretation -- Summary Statistics: Multiple R, R[superscript 2], s[subscript Y.X], and ANOVA -- The Predictor Variables: b, [beta], and t -- A Visual Representation of Multiple Regression -- Dummy Variable Regression -- Regression and Interaction -- Summary -- Practice Application: Partial Correlation -- Problems -- Chapter 13. Introduction to Logistic Regression -- An Example of Logit Regression -- Interpretation: Probabilities and Odds -- Assessing the Model Fit -- Multiple Logistic Regression -- Summary -- Practice Application: Logistic Regression -- Problem -- Appendix A. Statistical Tables -- Appendix B. Answers to Odd Numbered Problems -- Chapter 1 -- Chapter 2 -- Chapter 3 -- Chapter 4 -- Chapter 5 -- Chapter 6 -- Chapter 7 -- Chapter 8 -- Chapter 9 -- Chapter 10 -- Chapter 11 -- Chapter 12 -- Chapter 13 -- Glossary -- Index.
Tags from this library: No tags from this library for this title. Log in to add tags.

Includes bibliographical references and index.

Preface -- Chapter 1. Introduction to Statistical Analysis -- Why Study Statistics? -- Thinking Statistically -- Descriptive and Inferential Statistics -- Descriptive Statistics -- Inferential Statistics -- Statistics and Error -- Parametric and Nonparametric Statistics -- Operationalization -- Reliability and Validity -- Measurement -- Dependent and Independent Variables -- Nominal Level -- Ordinal Level -- Interval Level -- Ratio Level -- The Role of Statistics in Science -- Summary -- Practice Application: Variables and Levels of Measurement -- Problems -- Chapter 2. Presenting and Summarizing Data -- Types of Frequency Distributions -- Interpreting Cumulative Frequencies -- Frequency Distribution of Grouped Data -- Limits, Sizes, and Midpoints of Class Intervals -- Advantages and Disadvantages of Grouping Data -- Bar Graphs and Pie Charts -- Histograms and Frequency Polygons -- Numerical Summation of Data: Percentages, Proportions, and Ratios -- Summary -- Practice Application: Displaying and Summarizing Data -- Problems -- Chapter 3. Central Tendency and Dispersion -- Measures of Central Tendency -- Mode -- Median -- Computing the Median with Grouped Data -- The Mean -- Computing the Mean from Grouped Data -- A Research Example -- Choosing a Measure of Central Tendency -- Measures of Dispersion -- Range -- Standard Deviation -- Computational Formula for s -- Variability and Variance -- Computing the Standard Deviation from Grouped Data -- Coefficient of Variation -- Index of Qualitative Variation -- Summary -- Practice Application: Central Tendency and Dispersion -- Reference -- Problems -- Chapter 4. Probability and the Normal Curve -- Probability -- The Multiplication Rule -- The Addition Rule -- Theoretical Probability Distributions -- The Normal Curve -- Different Kinds of Curves -- The Standard Normal Curve -- The z Scores -- Finding Area of the Curve Below the Mean -- Summary -- Practice Application: The Normal Curve and z Scores -- Reference -- Problems -- Chapter 5. The Sampling Distribution and Estimation Procedures -- Sampling -- Simple Random Sampling -- Stratified Random Sampling -- The Sampling Distribution -- The Central Limit Theorem -- Standard Error of the Sampling Distribution -- Point and Interval Estimates -- Confidence Intervals and Alpha Levels -- Calculating Confidence Intervals -- Sampling and Confidence Intervals -- Interval Estimates for Proportions -- Estimating Sample Size -- Estimating Sample Size for Proportions -- Summary -- Practice Application: The Sampling Distribution and Estimation -- Problems -- Chapter 6. Hypothesis Testing: Interval/Ratio Data -- The Logic of Hypothesis Testing -- The Evidence and Statistical Significance -- Errors in Hypothesis Testing -- One Sample z Test -- Decision Rule -- The t Test -- Degrees of Freedom -- The t Distribution -- Directional Hypotheses: One- and Two-Tailed Tests -- Computing t -- t Test for Correlated (Dependent) Means -- Effects of Sample Variance on H[subscript 0] Decision -- Large Sample t Test: A Computer Example -- Interpreting the Printout -- Calculating t with Unequal Variances -- Testing Hypotheses for Single-Sample Proportions -- Statistical Versus Substantive Significance, and Strength of Association -- Summary -- Practice Application: t Test -- Problems -- Chapter 7. Analysis of Variance -- Assumptions of Analysis of Variance -- The Basic Logic of ANOVA -- The Idea of Variance Revisited -- The Advantage of ANOVA over Multiple Tests -- The F Distribution -- An Example of ANOVA -- Determining Statistical Significance: Mean Square and the F Ratio -- ETA Squared -- Multiple Comparisons: The Scheffe Test -- Two-Way Analysis of Variance -- Determining Statistical Significance -- Significance Levels -- Understanding Interaction -- A Research Example of a Significant Interaction Effect -- Summary -- Practice Application -- Problems -- Chapter 8. Hypothesis Testing with Categorical Data: Chi-Square Test -- Table Construction -- Putting Percentages in Tables -- Assumptions for the Use of Chi-Square -- The Chi-Square Distribution -- Yates' Correction for Continuity -- Chi-Square Distribution and Goodness of Fit -- Chi-Square-Based Measures of Association -- Sample Size and Chi-Square -- Contingency Coefficient -- Cramer's V -- A Computer Example of Chi-Square -- Kruskal-Wallis One-Way Analysis of Variance -- Summary -- Practice Application: Chi-Square -- Reference -- Problems -- Chapter 9. Nonparametric Measures of Association -- The Idea of Association -- Does an Association Exist? -- What Is the Strength of the Association? -- What Is the Direction of the Association? -- Proportional Reduction in Error -- The Concept of Paired Cases -- A Computer Example -- Gamma -- Lambda -- Somer's d -- Tau-B -- The Odd's Ratio and Yule's Q -- Spearman's Rank Order Correlation -- Which Test of Association Should We Use? -- Summary -- Practice Application: Nonparametric Measures of Association -- Reference -- Problems -- Chapter 10. Elaboration of Tabular Data -- Causal Analysis -- Criteria for Causality -- Association -- Temporal Order -- Spuriousness -- Necessary Cause -- Sufficient Cause -- Necessary and Sufficient Cause -- A Statistical Demonstration of Cause-and-Effect Relationships -- Multivariate Contingency Analysis -- Introducing a Third Variable -- Explanation and Interpretation -- Illustrating Elaboration Outcomes -- Controlling for One Variable -- Further Elaboration: Two Control Variables -- Partial Gamma -- When Not to Compute Partial Gamma -- Problems with Tabular Elaboration -- Summary -- Practice Application: Bivariate Elaboration -- Reference -- Problems -- Chapter 11. Bivariate Correlation and Regression -- Preliminary Investigation: The Scattergram -- The Slope -- The Intercept -- The Pearson Correlation Coefficient -- Covariance and Correlation -- Partitioning r Squared and Sum of Squares -- Standard Error of the Estimate -- Standard Error of r -- Significance Testing for Pearson's r -- The Interrelationship of b, r, and [beta] -- Summarizing Properties of r, b, and [beta] -- Summarizing Prediction Formulas -- A Computer Example of Bivariate Correlation and Regression -- Practice Application: Bivariate Correlation and Regression -- Practice Application: Bivariate Correlation and Regression -- Reference -- Problems -- Chapter 12. Multivariate Correlation and Regression -- Partial Correlation -- Computing Partial Correlations -- Computer Example and Interpretation -- Second-Order Partials: Controlling for Two Independent Variables -- The Multiple Correlation Coefficient -- Multiple Regression -- The Unstandardized Partial Slope -- The Standardized Slope ([beta]) -- A Computer Example of Multiple Regression and Interpretation -- Summary Statistics: Multiple R, R[superscript 2], s[subscript Y.X], and ANOVA -- The Predictor Variables: b, [beta], and t -- A Visual Representation of Multiple Regression -- Dummy Variable Regression -- Regression and Interaction -- Summary -- Practice Application: Partial Correlation -- Problems -- Chapter 13. Introduction to Logistic Regression -- An Example of Logit Regression -- Interpretation: Probabilities and Odds -- Assessing the Model Fit -- Multiple Logistic Regression -- Summary -- Practice Application: Logistic Regression -- Problem -- Appendix A. Statistical Tables -- Appendix B. Answers to Odd Numbered Problems -- Chapter 1 -- Chapter 2 -- Chapter 3 -- Chapter 4 -- Chapter 5 -- Chapter 6 -- Chapter 7 -- Chapter 8 -- Chapter 9 -- Chapter 10 -- Chapter 11 -- Chapter 12 -- Chapter 13 -- Glossary -- Index.

Machine converted from AACR2 source record.

There are no comments on this title.

to post a comment.

Powered by Koha