Title: EQD Ch1: Experiments and Generalized Causal Inference
1EQD Ch1 Experiments and Generalized Causal
Inference
2Experiments and Causation
- Defining Cause, Effect and Causal Relationships
- Cause a variable that produces an effect
- Reciprocal relationship two variables that
cause each other (ex low grades and not
studying)
3Experiments and Causation
- Cause
- Inus condition From philosopher J.L. Mackie
(1984), the idea that a cause is an insufficient
but non-redundant part of an unnecessary but
sufficient condition for bringing about an
effect. - Example match and the forest fire, cancer drugs
and tumor results - Most causes are more accurately called inus
conditions. We rarely know all the factors for a
specific effect.
4Experiments and Causation
- Effect
- Effect the difference between what did happen
and what would have happened. - Counterfactual the state of affairs that would
have happened in the absence of the cause. - Example PKU and the infant diet
5Experiments and Causation
- Causal Relationship
- A causal relationship exists if
- The cause preceded the effect
- The cause was related to the effect
- We can find no plausible alternative explanation
for the effect other than the cause
6Experiments and Causation
- Causation, Correlation and Confounds
- Causation cause of an effect usually causation
and effect are correlated - Correlation a measure of the strength of a
relationship between two variables. - Correlation does not prove causation.
- Example Education and income
- Confounds a relationship that may not be causal
but due to another variable
7Experiments and Causation
- Manipulable and Nonmanipulable Causes
- Manipulable causes variables that can be
changed/manipulated - Example dose of medicine, amount of sleep or
food, number of children in class - Nonmanipulable cannot be causes in experiments
- Example age, biological sex, height
8Experiments and Causation
- Causal Description and Causal Explanation
- Causal Description Identifying that a causal
relationship exists between A and B. - Causal Explanation Explaining how A causes B
- Example light switch and illumination
- Causal explanation helps generalize causal
relationships to other situations.
9Experiments and Causation
- Molar and Molecular
- Molar Causation An interest in the overall
causal relationship between a treatment package
and its effects, in which both may consist of
multiple parts. - Molecular Causation An interest in knowing
which parts of a treatment package are more or
less responsible for which parts of the effects
through which mediational processes.
10Modern Descriptions of Experiments
- Randomized Experiment
- Randomized Experiment An experiment in which
units are randomly assigned to conditions. - Commonly called true experiment
- Independent variable deliberately manipulated
variable control cause - Dependent variable varies in response to
independent variable outcome effect
11Experiments and Causation
- Quasi-Experiment
- Quasi-Experiment An experiment in which units
are not randomly assigned to conditions - Quasi-experimentation is falsificationist.
- Falsification to show that data are
inconsistent with a theory or hypothesis
12Experiments and Causation
- Natural Experiment
- Natural Experiment investigates the effects of
a naturally occurring event, sometimes limited to
events that are not manipulable and sometimes
used more generally. - Example earthquakes and property value
13Experiments and Causation
- Nonexperimental Design
- Nonexperimental study any study that is not an
experiment. A cause and effect are identified
and measured but other structural features of
experiments are missing. - Missing elements randomization, control,
pretests - Also know as correlational study and
observational study
14Experiments and the Generalization of Causal
Connections
- The strength of experimentation is its ability to
illuminate causal inference. The weakness of
experimentation is doubt about th extent to which
that causal relationship generalizes.
15Experiments and the Generalization of Causal
Connections
- Local Experimentation and Generalizations
- Experiments try to generalize to more people and
settings than represented in a single experiment. - Causal generalization how well a causal
relationship extends across the conditions that
were studied.
16Experiments and the Generalization of Causal
Connections
- Construct Validity
- Construct Validity the degree to which
inferences are warranted from the observed
persons, settings, and cause-and-effect
operations sampled within a study to the
constructs that the samples represent. - Example patient education and surgery
17Experiments and the Generalization of Causal
Connections
- External Validity
- External Validity to infer whether a causal
relationship holds over variations in persons,
settings, treatments, and outcomes. - Example Head Start Memphis, TN and Dallas, TX
18Experiments and the Generalization of Causal
Connections
- Making Causal Generalizations
- Sampling and Causal Generalization
- Formal probability sampling
- Delineate populations and sample from within each
sampling - Random selection used with population samples
19Experiments and the Generalization of Causal
Connections
- Making Causal Generalizations
- Grounded Theory
- Causal Generalizations that are presented as a
theory grounded in the actual practice of
science.
20Experiments and the Generalization of Causal
Connections
- Making Causal Generalizations
- Grounded Theory
- Five principles
- Surface Similarity
- Ruling Out Irrelevancies
- Making Discriminations
- Interpolation and Extrapolation
- Causal Explanation
21Experiments and Metascience
- Modern Social and Psychological Critiques
- Scientific knowledge is partly determined by
social and psychological forces and partly by
issue of economic and political power within
science and the larger society
22Experiments and the Generalization of Causal
Connections
- Implications for Experiments
- Experimental results partly relative to those
assumptions and contexts and may change with new
assumptions and contexts.