1 / 27

Statistics: A Tool For Social Research

Statistics: A Tool For Social Research. Seventh Edition Joseph F. Healey. Chapter 1. Introduction. Chapter Outline. Why Study Statistics? The Role of Statistics in Scientific Inquiry The Goals of This Text Descriptive and Inferential Statistics Discrete and Continuous Variables

Download Presentation

Statistics: A Tool For Social Research

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Statistics: A Tool ForSocial Research Seventh Edition Joseph F. Healey

  2. Chapter 1 Introduction

  3. Chapter Outline • Why Study Statistics? • The Role of Statistics in Scientific Inquiry • The Goals of This Text • Descriptive and Inferential Statistics • Discrete and Continuous Variables • Level of Measurement

  4. In This Presentation • The role of statistics in the research process • Statistical applications • Types of variables

  5. The Role Of Statistics • Statistics are mathematical tools used to organize, summarize, and manipulate data.

  6. Data • Scores on variables. • Information expressed as numbers (quantitatively).

  7. Variables • Traits that can change values from case to case. • Examples: • Age • Gender • Race • Social class

  8. Case • The entity from which data is gathered. • Examples • People • Groups • States and nations

  9. The Role Of Statistics:Example • Describe the age of students in this class. • Identify the following: • Variable • Data • Cases • Appropriate statistics

  10. The Role Of Statistics: Example • Variable is age. • Datais the actual ages(or scores on the variable age): 18, 22, 23, etc. • Cases are the students.

  11. The Role Of Statistics: Example • Appropriate statistics include: • average - average age of students in this class is 21.7 years. • percentage - 15% of students are older than 25

  12. Statistical Applications • Two main statistical applications: • Descriptive statistics • Inferential statistics

  13. Descriptive Statistics • Summarize variables one at a time. • Summarize the relationship between two or more variables.

  14. Descriptive Statistics • Univariate descriptive statistics include: • Percentages, averages, and various charts and graphs. • Example: On the average, students are 20.3 years of age.

  15. Descriptive Statistics • Bivariate descriptive statistics describe the strength and direction of the relationship between two variables. • Example: Older students have higher GPAs.

  16. Descriptive Statistics • Multivariate descriptive statistics describe the relationships between three or more variables. • Example: Grades increase with age for females but not for males.

  17. Inferential Statistics • Generalize from a sample to a population. • Population includes all cases in which the research is interested. • Samples include carefully chosen subsets of the population.

  18. Inferential Statistics • Voter surveys are a common application of inferential statistics. • Several thousand carefully selected voters are interviewed about their voting intentions. • This information is used to estimate the intentions of all voters (millions of people). • Example: The Republican candidate will receive about 42% of the vote.

  19. Types Of Variables • Variables may be: • Independent or dependent • Discrete or continuous • Nominal, ordinal, or interval-ratio

  20. Types Of Variables • In causal relationships: CAUSE  EFFECT independent variable  dependent variable

  21. Types Of Variables • Discrete variables are measured in units that cannot be subdivided. • Example: Number of children • Continuous variables are measured in a unit that can be subdivided infinitely. • Example: Age

  22. Level Of Measurement • The mathematical quality of the scores of a variable. • Nominal - Scores are labels only, they are not numbers. • Ordinal - Scores have some numerical quality and can be ranked. • Interval-ratio - Scores are numbers.

  23. Nominal Level Variables • Scores are different from each other but cannot be treated as numbers. • Examples: • Gender • 1 = Female, 2 = Male • Race • 1 = White, 2 =Black, 3 = Hispanic • Religion • 1 = Protestant, 2 = Catholic

  24. Ordinal Level Variables • Scores can be ranked from high to low or from more to less. • Survey items that measure opinions and attitudes are typically ordinal.

  25. Ordinal Level Variables: Example • “Do you agree or disagree that University Health Services should offer free contraceptives?” • A student that agreed would be more in favor than a student who disagreed. • If you can distinguish between the scores of the variable using terms such as “more, less, higher, or lower” the variable is ordinal.

  26. Interval-ratio Variables • Scores are actual numbers and have a true zero point and equal intervals between scores. • Examples: • Age (in years) • Income (in dollars) • Number of children • A true zero point (0 = no children) • Equal intervals: each child adds one unit

  27. Level of Measurement • Different statistics require different mathematical operations (ranking, addition, square root, etc.) • The level of measurement of a variable tells us which statistics are permissible and appropriate.

More Related