L19 - Instrumental Variables Flashcards
1
Q
What is one case in which we can still use OLS to give consistent parameter estimates?
A
- In the case of recursive models for example the cobweb model
- These are models in which the endogenous variable can be solved in sequence
- If the errros in the individual equations are not correlated with each other then OLS will give consistent estimates of any individual equation taken from a recursive system.
2
Q
What is an example of a recursive model?
A
- Always use OLS when can e.g. we have proven its still consistent as it will have the lower variance
3
Q
What are the two problems with the Indirect Least Squares Estimator?
A
- the estimator might not be unique - if the equation is overidentified
- hard to work through algebra and compute the answers
4
Q
What is the instrumental variables estimator?
A
5
Q
What is the equation for β(hat) as defined by the instrumental variable estimator?
A
6
Q
Is the IV estimator consistent?
A
7
Q
What is the Variance of the IV estimator?
A
- The Variance of IV is high that OLS because it is divided by the correlation coefficient of X and Z
- as it is squared it must be between 0 and 1, thus the denominator of the IV will always be smaller than that in the OLS equations thus IV is less efficient
- The Closer Z and X are correlated the more efficent the IV estimator is - instrument strength
- But a good instrument should not be correlated with the error terms, thus the more it is correlated with the X variables, it must then be more correlated with the errors thus there is a trade off between Instrument strength and instrument validity
8
Q
Where would we get an instrument?
A
- in a system of simultaneous equations, instruments are often provided to us in the form of the exogenous variable
9
Q
When does IV and ILS give indentical parameter estimates?
A
When the equation is just identified
- IV is better however because:
- dont have to worry about computed difficult algebra
- we have formulas for the SE of the coefficient and can then compute hypothesis tests of them
10
Q
Do we always want to go for a consistent estimator at all costs?
A
- no there may be times where we pick a biased or inconsistent estimator because of it trade-off with efficiency - Mean Square error