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Statistics: A Tool For Social Research

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Title: Statistics: A Tool For Social Research


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 StatisticsExample
  • 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.
  • Data is 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.
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