Title: Modeling Political Phenomena
1Modeling Political Phenomena
- Using Control Variables and Gauging Validity
2Face Validity
- Face validity means the measurement of a concept
is consistent with an agreed definition. - It does not mean however that this is the best
measurement to capture the concept.
3Construct Validity
- construct validity The match between the land of
theory and the land of observation - How effective do our operationalized variables
represent the mental image of a concept into the
public manifestation of that world?
4Reliability
- We may want, or need to, test for reliability,
which is to ask if our variables consistently
provide the same results. - To be sure we can measure/test repeatedly or even
use multiple measures for the same variable. For
development we can also use GDP per capita
besides energy consumption per capita.
5Key question of Internal Validity
- When we test a hypothesis and either accept it or
reject it, how do we know that we made the right
decision? - What about alternative explanations that we did
not account for? - What should we do to gain confidence?
6Internal Validity
- Are there other causes for what I am observing?
- If so, a study will lack internal validity if it
cannot rule out plausible alternative
explanations.
7Internal Validity of a Study
Is the relationship causal between...
- What you measured and what you saw?
- Your program and your observations?
Alternative cause
Alternative cause
Program
Observations
Program-outcome Relationship
What you do
What you see
Alternative cause
Alternative cause
Observation
In this study
8The Purpose of Control Variables
- We use control variables to account for possible
alternative explanations we can think of. - For example, when I examined whether democracies
are generally more peaceful than autocracies I
included several control variables.
9Explaining Pacifistic Democracy
- Peace (Y) Democracy (X1) State Power (X2)
Development (X3) of Bordering States (X4) - In the model above, I have more confidence that
Democracy is related to peace considering I
control for the other variables that may skew my
test.
10- We need to take care that our theory is not
missing other factors that may undermine the
validity of our theory and tests. - Our inferences will be flawed if we are actually
capturing other processes through our variables. - This means that the validity of our measures
would be undermined.
11- Several possible problems arise that are related
to model misspecification and spurious
relationships. - Thus, we need to control for confounding factors
and alternative explanations!!!
12Model Misspecification and Spuriousness
- Antecedent variable A variable that indirectly
affecting the relationship between two other
variables. - For example, Ivy league education increases
income. - However, parental wealth and legacy admissions
affect Ivy league education. Thus, income of
graduates from Ivy League schools may not be
random.
13- Here Ivy League Parents is an antecedent variable
- Ivy League Parents Ivy League Kids
high income kids - Hence, admission to Ivy schools clearly not
random or pure merit-based, and thus the income
earned by these people.
14Model Misspecification and Spuriousness
- Intervening Variable These may be spuriously
related to another relationship. - How can states fight each other if they are not
contiguous with each other? Only the strongest,
with large navies, bases, etc., could do so. - Hence, geographic contiguity or distance is an
intervening variable. States may or may not be
more peaceful, but it is hard to avoid conflict
when it is on your borders.
15Model Misspecification and Spuriousness
- Alternative Variables We also want to control
for variables that would bias our results if
omitted. - In this case, the X variables in a model would
produce biased estimates, undermining their
validity and producing error that leads to
inaccurate inferences.
16Here is a spurious relationship from my research
-
- IGOs conflicts
-
- Powerful states
- Powerful states both in more IGOs and conflicts,
but these two variables not directly related but
a function of state power.
17Classic Spurious Case
???
Ice Cream Consumption
Crime
Summer Temperatures
Hence we see that despite the fact that ice cream
consumption is correlated with crime, the real
cause is that summer temperatures increase both
ice cream consumption and crime.
18Assessing your knowledge
- If your scientific study has taken care to make
sure that your variables are measured correctly,
used the appropriate control variables, and used
proper tests, then what is next?
19Conclusion Validity
Is there a relationship between...
- What you did and what you saw?
- Your program and your observations?
Program
Observations
Program-outcome Relationship
What you do
What you see
Observation
In this study
20Group Work
- Identify the level on which variables are
measured. - Identify problems of construct validity, internal
validity, and biased samples
21External Validity
- Now that you are confident of what you found in
your study, how well does my study or sample
relate to the general population?In other
words, how strong is my study able to generalize
to other cases?
22Research Designs and Sampling
In most studies what is examined are some cases,
not an entire population. For example, in
Presidential Election polls not every voter is
asked how they will vote but still polls can be
very accurate. How does that happen?
23Population vs. Sample
- Research in the social sciences typically uses
sampling methods. - We draw a sample of subjects from a greater
population. - We then draw an inference from the sample about
the greater population. - In other words, we are generalizing about a
population from a subset (the sample).
24Validity and Bias
- In order to draw an accurate inference from a
sample, the sample needs to be reflective of the
population from which it is drawn. - If a sample is not reflective of the population,
then it is biased in some manner and the greater
study will lack validity.
25Types of Sampling
- Nonrandom snowballing, various improper
selection techniques or limited data. Measurement
error is greater. - Random pure chance of lottery and should reflect
population the larger the sample. Measurement
error decreases. - Quota or stratified Selecting on groups to form
sample so as to reflect greater population.
Measurement error is lower. - Census Includes entire population. No
measurement error.
26Mathematical Principle
- The larger the sample size, the more it will
reflect the population estimates/values. - Thus, the larger the sample, the less chance of
measurement error.
27External Validity of a Study
Theory
What you think
Cause construct
Effect construct
Cause-effect Construct
- Can we generalize to other persons, places, times?
28External Validity of a Study
- The last graphic is meant to convey the principle
that external validity is gained by additional
observations/tests in other studies. - This is why pundits will compare several election
polls to see how well they compare. If they do
not, then somebody is doing something wrong or
different.