Title: Bivariate and Multivariate Data Analysis
1Bivariate and Multivariate Data Analysis
2Linear Bivariate Relationships
- Bivariate two variables, the relationship
between the two - Univariate descprition
- Bivariate association
- Linear what is not linear well . . .
exponential, S-curve, curvilinear . . . - Scatterplot a tool we can use to evaluate a
bivariate linear relationship between two
interval level variables is a scatterplot
3The Scatterplot
- Too many values in an interval level variable for
a frequency table, right? - We actually have a display that contains more
information the scatterplot - So specifically?
- Values of one variable are on the Y axis, values
of the other on the X axis - Each case is represented by dot
- The pattern of the relationship emerges
4Example Lobbying
- Is there a relationship between how many years a
lobbyist has been working as a lobbyist and how
many legislator the lobbyist knows on a
first-name basis? - Yes, scatterplot shows a positive linear
relationship? - Outlier a case that is far outside of the range
of the other cases - example Son of the former Speaker
5Possible Relationships
- Scatterplot
- Positive
- Negative
- No Relationship
- Curvilinear
- Outliers
- The next step in bivariate analysis
- Linear regression analysis the last section of
PSC 412 - A line is estimated based on the position of the
individual dots
6As the number of aspirin taken increases from
half an aspirin to 5 aspirin, relief increases.
However, after 5 aspirin, adding more aspirin
doesn't increase relief it decreases it. There
is not a linear relation between aspirin and
relief. Taking 9 aspirin is NOT better than
taking 4 aspirin, as the graph above indicates.
7Regression Line Shows Strength and Direction
8Regression Line Shows Strength and Direction
9Analyzing More Than Two Variables
- Sorting Out Multiple Influences
- Multivariate analysis
- Testing a bivariate relationship requires the
introduction of control variables to falsify or
disprove the hypothesis for the bivariate
relationship - Multivariate statistical techniques will allow
you to examine both the separate simultaneous
effect of each independent variable and the
combined effects of all the independent variables
directly on the dependent variable at the same
time
10Possible Effects of Control Variables on Original
Relationships
- Refining original relationship holds only under
certain conditions - Replicating control variable has no effect on
original relationship - Candidate Choice and Gender, Controlling for Age
11- Reducing original relationship diminishes or
disappears - Candidate Choice and Gun Ownership, Controlling
for Residence - Revealing original relationship is strengthened
under certain conditions - Candidate Choice and Gender, Controlling for
Income - Reversal direction of original relationship
changes from positive to negative - Candidate Choice and Education, Controlling for
Country of Birth