causal modeling Flashcards
1
Q
causation (modeling)
A
the influence that components of a system exert on one another (“component” is used vs “variable”; component may reflect some underlying quality, like intelligence, which IQ measures but not perfectly)
2
Q
latent variable
A
unobserved variables, the theoretical concepts or constructs about which we are interested in making inferences (eg intelligence)
3
Q
empirical indicator
A
the observed variables, the measurements actually obtained in the study (eg IQ score)
4
Q
exogenous variable
A
- the latent variables whose causes are not represented by the model
- so nothing in the model’s scope “informs” the exogenous variables–in terms of causal diagrams, only arrows “leave” exogenous variables, and no arrows point toward them
5
Q
endogenous variable
A
- latent variables whose causes are represented within the model
- have at least one variable that has a causal effect on them–ie at least one arrow in the model points toward an endogenous variable
- eg, outside influences to the model (eg changes in government policy)
6
Q
correlating vs non-correlating pathways
A
- correlating–“there [must be] some node on the pathway from which you can get to both A and B by following the causal flow” (ie “source” node need not be on either end)
- non-correlating–these do not follow the directions of the causal links
7
Q
causal diagrams
A
- aka hypothetical causal network, reflecting a “state of belief” by the modeler
- nodes:
- square–can be measured
- round–cannot be measured (aka latent variable)
- links: arrows can be one way (A (tail) causes B (head)), or two-way (signifies a correlation vs causal)