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Instrumental-variablesEstimatorsInstrumental-variablesEstimators.doc
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4. Instrumental-variables Estimators
The fundamental assumption for consistency (A consistent estimator converges toward the parameter being estimated as the sample size increases; see Wooldridge p.170-171) of least-squares estimators is that the model error term is unrelated to the independent variables or regressors, . The only effect of x on y is a direct effect via the term (think about ).
x y
u
where there is no association between x and u. So x and u are independent causes of y.
If this assumption fails, the OLS estimator is inconsistent and the OLS estimator can no longer be given a causal interpretation. In particular, the OLS estimate can no longer be interpreted as estimating the marginal effect on the dependent variable y of an exogenous change in the i-th regressor variable .
For example, consider a regression of log-earnings (y) on years of schooling (x). The error term u embodies all factors other than schooling that determine earnings such as ability. Suppose a person has a high level of u, as a result of high (unobserved) ability. This increases earnings, since , but it may also lead to higher levels of x, since schooling is likely to be higher for those with high ability. A more appropriate path diagram is then the following:
x y
u
where now there is an association between x and u.
Now higher levels of x have two effects on y. There is both a direct effect via and an indirect effect via u affecting x, which in turn affects y. The goal of regression is to estimate only the first effect, yielding an estimate of . We have with total derivative
The OLS estimate will combine these two effects, giving (for example) where both effects are positive (). The OLS estimator is therefore biased and inconsistent for , unless there is no association between x and u.
Examples of such failure include omitted variables, simultaneity, measurement
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