Chapter 6: Relationships Between Two Variables: Cross-Tabulation - PowerPoint PPT Presentation

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Chapter 6: Relationships Between Two Variables: Cross-Tabulation

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Title: Chapter 6 Cross-tabulations Subject: for use with SOCIAL STATISTICS FOR A DIVERSE SOCIETY Author: William Edward Wagner, III Last modified by – PowerPoint PPT presentation

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Title: Chapter 6: Relationships Between Two Variables: Cross-Tabulation


1
Chapter 6 Relationships Between Two Variables
Cross-Tabulation
  • Independent and Dependent Variables
  • Constructing a Bivariate Table
  • Computing Percentages in a Bivariate Table
  • Dealing with Ambiguous Relationships Between
    Variables
  • Reading the Research Literature
  • Properties of a Bivariate Relationship
  • Elaboration
  • Statistics in Practice

2
Introduction
  • Bivariate Analysis A statistical method designed
    to detect and describe the relationship between
    two variables.
  • Cross-Tabulation A technique for analyzing the
    relationship between two variables that have been
    organized in a table.

3
Understanding Independent and Dependent Variables
  • Example If we hypothesize that English
    proficiency varies by whether person is native
    born or foreign born, what is the independent
    variable, and what is the dependent variable?
  • Independent nativity
  • Dependent English proficiency

4
Constructing a Bivariate Table
  • Bivariate table A table that displays the
    distribution of one variable across the
    categories of another variable.
  • Column variable A variable whose categories are
    the columns of a bivariate table.
  • Row variable A variable whose categories are the
    rows of a bivariate table.
  • Cell The intersection of a row and a column in a
    bivariate table.
  • Marginals The row and column totals in a
    bivariate table.

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Percentages Can Be Computed in Different Ways
  • Column Percentages column totals as base
  • Row Percentages row totals as base

9
Absolute Frequencies
  • Support for Abortion by Job Security
  • Abortion Job Find Easy Job Find Not Easy Row
    Total
  • Yes 24 25 49
  • No 20 26 46
  • Column Total 44 51 95

10
Column Percentages
  • Support for Abortion by Job Security
  • Abortion Job Find Easy Job Find Not Easy Row
    Total
  • Yes 55 49 52
  • No 45 51 48
  • Column Total 100 100
    100 (44)
    (51) (95)

11
Row Percentages
  • Support for Abortion by Job Security
  • Abortion Job Find Easy Job Find Not Easy Row
    Total
  • Yes 49 51 100 (49)
  • No 43 57 100
    (46)
  • Column Total 46 54
    100
    (95)

12
Properties of a Bivariate Relationship
  1. Does there appear to be a relationship?
  2. How strong is it?
  3. What is the direction of the relationship?

13
Existence of a Relationship
  • IV Number of Traumas
  • DV Support for Abortion
  • If the number of traumas were unrelated to
    attitudes toward abortion among women, then we
    would expect to find equal percentages of women
    who are pro-choice (or anti-choice), regardless
    of the number of traumas experienced.

14
Existence of the Relationship
15
Determining the Strength of the Relationship
  • A quick method is to examine the percentage
    difference across the different categories of the
    independent variable.
  • The larger the percentage difference across the
    categories, the stronger the association.
  • We rarely see a situation with either a 0 percent
    or a 100 percent difference.

16
Direction of the Relationship
  • Positive relationship A bivariate relationship
    between two variables measured at the ordinal
    level or higher in which the variables vary in
    the same direction.
  • Negative relationship A bivariate relationship
    between two variables measured at the ordinal
    level or higher in which the variables vary in
    opposite directions.

17
A Positive Relationship
18
A Negative Relationship
19
Elaboration
  • Elaboration is a process designed to further
    explore a bivariate relationship it involves the
    introduction of control variables.
  • A control variable is an additional variable
    considered in a bivariate relationship. The
    variable is controlled for when we take into
    account its effect on the variables in the
    bivariate relationship.

20
Three Goals of Elaboration
  • Elaboration allows us to test for
    non-spuriousness.
  • Elaboration clarifies the causal sequence of
    bivariate relationships by introducing variables
    hypothesized to intervene between the IV and DV.
  • Elaboration specifies the different conditions
    under which the original bivariate relationship
    might hold.

21
Testing for Nonspuriousness
  • Direct causal relationship a bivariate
    relationship that cannot be accounted for by
    other theoretically relevant variables.
  • Spurious relationship a relationship in which
    both the IV and DV are influenced by a causally
    prior control variable and there is no causal
    link between them. The relationship between the
    IV and DV is said to be explained away by the
    control variable.

22
The Bivariate Relationship Between Number of
Firefighters and Property Damage
  • Number of Firefighters ? Property Damage
  • (IV) (DV)

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Process of Elaboration
  • Partial tables bivariate tables that display the
    relationship between the IV and DV while
    controlling for a third variable.
  • Partial relationship the relationship between
    the IV and DV shown in a partial table.

25
The Process of Elaboration
  1. Divide the observations into subgroups on the
    basis of the control variable. We have as many
    subgroups as there are categories in the control
    variable.
  2. Re-examine the relationship between the original
    two variables separately for the control variable
    subgroups.
  3. Compare the partial relationships with the
    original bivariate relationship for the total
    group.

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Intervening Relationship
  • Intervening variable a control variable that
    follows an independent variable but precedes the
    dependent variable in a causal sequence.
  • Intervening relationship a relationship in which
    the control variable intervenes between the
    independent and dependent variables.

29
Intervening RelationshipExample
  • Religion ? Preferred Family Size ? Support for
    Abortion
  • (IV) (Intervening Control Variable)
    (DV)

30
Conditional Relationships
  • Conditional relationship a relationship in which
    the control variables effect on the dependent
    variable is conditional on its interaction with
    the independent variable. The relationship
    between the independent and dependent variables
    will change according to the different conditions
    of the control variable.

31
Conditional Relationships
  • Another way to describe a conditional
    relationship is to say that there is a
    statistical interaction between the control
    variable and the independent variable.

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Conditional Relationships
33
Conditional Relationships
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