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Making Causal Inferences and Ruling out Rival Explanations

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1 Making Causal Inferences and Ruling out Rival Explanations
29 February

2 Questions? How do we know that X is causing Y?
Did X have any effect on Y? If X had not happened would Y have changed anyway?

3 Hypothesized relationship:
%Women elected in National Parliaments Party rules gender quotas

4 Questions? How do we know that party quotas causing changes in %women elected? Standard Design Party adopts quotas  % women elected X O Where X = treatment and O = observation

5 Establishing Causation:
Co-variation Time – (x occurs before y) Consistent with other evidence Rule out rival explanations Example – spurious relationship

6 Spurious Relationship
a relationship in which two variables that are not causally linked appear to be so because a third variables in influencing both of them

7 Spurious Relationship
Fire damage in $ # of fire engines responding to call + Intensity of fire + (the third variable problem)

8 Alternative explanations:
Electoral System Political Culture %Women elected in National Parliaments Women’s Labor Force Participation Party rules - quotas Access to educational opportunities Women’s Political Resources % of women candidates standing for election

9 Spurious Relationship
%women elected Party quotas + Political culture +

10 When choosing a research design?
When and how to make observations: Internal Validity Ability to establish causality External Validity Ability to generalize

11 Types of Designs: Experimental designs Quasi-experimental
Control groups Quasi-experimental Non-experimental designs Statistical controls

12 Manipulation of an independent variable
Experiments come in a wide variety of apparent types but all share three basic characteristics: Random assignment Manipulation of an independent variable Control over other potential sources of systematic variance X O1 R O2

13 These basic characteristics effectively solve the two basic problems in nonexperimental (correlational) research: The directionality problem The third variable problem

14 Random Assignment Random assignment means that assignment to experimental conditions is determined by chance. Participants have a equal probabilities of being assigned to a treatment or control group. This insures that any pre-existing characteristics that participants bring with them to the study are distributed equally among the experimental groups in the long run. Treatment group = (equivalent to) Control group

15 Think about example of party quotas a % women elected:
Randomly assign countries to two groups: treatment and control Theoretically should end up with two groups that have equivalent distributions on all other “third variables” (i.e. culture, % women in labour force, etc.) Have one group adopt quotas Observe % women elected, treatment group expected to have higher average for % women elected.

16 Problems? Random assignment might be difficult in this case.
Turn to quasi-experiments when randomization not possible

17 To Review - One Group Post-Test Only Design
X O The simplest and the weakest possible design: Lack of a pretest prevents assessment of change Lack of a control group prevents threats from being ruled out.

18 Threats to Internal Validity
Selection Threats Maturation History Testing Instrumentation Regression Note: Experimental designs control for these Party adopts quotas  % women elected X O

19 One Group Post-Test Only Design
X O Without changing the basic nature of this design, it can be improved considerably by adding additional outcome measures: O1 X O O3 Compared to norms or expectations, only O2 should be unusual.

20 Post-Test Only Design with Nonequivalent Groups
X O O Threats: Selection

21 One-Group Pretest Post-Test Design
O X O This very common applied design is susceptible to all threats to within-groups comparisons: History Maturation Testing Regression Instrumentation

22 One-Group Pretest Post-Test Design
O X O One powerful modification is to add pretests: O O O O O X O Maturation threats can now be examined and their influence separated from treatment effects.

23 O O O O O O O O O X O

24 Untreated Control Group Design with Pretest and Posttest
O1 X O2 O O2 Can compare change within groups and across groups Expect change in treatment group to be greater Selection still a threat

25 Conclusions: Experiments best for internal validity
May not be good on external validity In non-experimental designs, use statistical controls (hold constant all possible “third” variables.


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