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TwoWay Table

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The lurking variable creates subgroups, and failure to take these subgroups into ... Lurking variable: Applications were split between the Business School (240) and ... – PowerPoint PPT presentation

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Title: TwoWay Table


1
Two-Way Table
2
To study the relationships between two
categorical variables, we use two-way tables.
Data from the U.S. Census Bureau for the year
2000 on the level of education reached by
Americans of different ages. page 134
3
The number of observations falling into each
combination of categories is entered into each
cell of the table.
for the age group 3554, 23160,000 people
completed college.
4
17,230
totaling the values in each row of the table
gives the marginal distribution of the row
variable (whose values are on the left column)
Education
totaling the values in each column of the table
gives the marginal distribution of the column
variable (whose values are on the left column)
Age group
5
The distribution of education level is a marginal
distribution
6
Marginal distributions
7
Page 137 Exercise 6.3
8
Relationship in percents
  • Relationships between categorical variables are
    described by calculating appropriate percents
    from the counts given in the table
  • prevents misleading comparisons due to unequal
    sizes for different groups
  • What percent of people aged 25 to 34 have
    completed 4 years of college? For other age
    groups?
  • Page 138, Exercise 6.5

9
Conditional Distributions
If we look at people who are in the age group
25-34, and ask about their education level, we get
This answers under the condition in age group
25-34, how education level is distributed? This
is the conditional distribution of education
level given the age group being 25-34.
10
How common is college education (4 or more years)?
44828/17523025.58 But if we divide into
different age group we get 29.3 for the age
group 25-34 28.4 for 35-54 18.9 for 55 and
over.
11
Conditional Distributions
Comparing conditional distributions using bar
graphs
12
Conditional Distributions
  • If the conditional distributions of the second
    variable are nearly the same for each category of
    the first variable, then we say that there is not
    an association between the two variables
  • If there are significant differences in the
    conditional distributions for each category, then
    we say that there is an association between the
    two variables.

13
Conditional Distributions
  • Now lets find the conditional distribution of
    age group given the education level.
  • If education level is not HS grad, how is the
    age group distributed?
  • If education level is HS grad, how is the age
    group distributed?
  • If the education level is some college, how is
    the age group distributed?
  • If the education level is college grad, how is
    the age group distributed?
  • Present your result in bar graph. Are the two
    categorical variables associated?

14
Using Excel Pivot Table
  • Open Ch6 ex06-19.xls
  • Select a cell in the range of the data Select
    Data ?PivotTable and PivotChart Report
    ?PivotChart Report ?Data Range A2B73?Next
  • Choose Layout ?Drag Relapse to ROW, Placebo
    to COLUMN ?Drag Placebo to DATA ?Finish
    (Relapse and Placebo are the first row in the
    data table representing respectively the values
    of Treatment results and drugs used)

15
Using Excel Pivot Table
  • For conditional distribution of treatment results
    (row variable) , given the type of drug used
    select any cell in the generated table ?right
    click ? Field Settings ? Options ? Show data as
    of row ? Ok
  • For conditional distribution of drugs (column
    variable) used, given the treatment result
    select any cell in the generated table ?right
    click ? Field Settings ? Options ? Show data as
    of column ? Ok

16
Using Excel Pivot Table
  • Converting to bar graphs
  • Select the marginal distribution table ?Choose
    Edit on Menubar ? Copy
  • Select an empty cell away from the table ?Choose
    Edit on Menubar ? Paste Special ? Under Paste,
    select Values
  • Choose the new table but not including the Grand
    Totals or Count of placebo or placebo ?
    insert Chart ? Column ?Next ?Finish

17
Simpsons Paradox
  • When studying the relationship between two
    variables, there may exist a lurking variable
    that creates a reversal in the direction of the
    relationship when the lurking variable is ignored
    as opposed to the direction of the relationship
    when the lurking variable is considered.
  • The lurking variable creates subgroups, and
    failure to take these subgroups into
    consideration can lead to misleading conclusions
    regarding the association between the two
    variables.

18
Discrimination?(Simpsons Paradox)
  • Consider the acceptance rates for the following
    group of men and women who applied to college.

A higher percentage of men were accepted
Discrimination?
19
Discrimination?(Simpsons Paradox)
  • Lurking variable Applications were split
    between the Business School (240) and the Art
    School (320).

BUSINESS SCHOOL
A higher percentage of women were accepted in
Business
20
Discrimination?(Simpsons Paradox)
  • Lurking variable Applications were split
    between the Business School (240) and the Art
    School (320).

ART SCHOOL
A higher percentage of women were also accepted
in Art
21
Discrimination?(Simpsons Paradox)
  • So within each school a higher percentage of
    women were accepted than men.There is not any
    discrimination against women!!!
  • This is an example of Simpsons Paradox. When
    the lurking variable (School applied to Business
    or Art) is ignored the data seem to suggest
    discrimination against women. However, when the
    School is considered the association is reversed
    and suggests discrimination against men.
  • Read Example 6.5 page 141
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