代写Instrumental Variables EstimationStage Least Squares
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代写Instrumental Variables EstimationStage Least Squares
From Chapter 15 you will learn
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Motivation: Omitted variables in a simple regression model
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IV estimation of multiple regression model
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Two stage least square
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Testing for endogeneity and testing for overidentifying restrictions
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The endogeneity problem is endemic in social sciences/economics
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In many cases important personal variables cannot be observed
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These are often correlated with observed explanatory information
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The endogeneity problem is endemic in social sciences/economics
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In many cases important personal variables cannot be observed
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These are often correlated with observed explanatory information
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Measurement error may lead to endogeneity
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The endogeneity problem is endemic in social sciences/economics
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In many cases important personal variables cannot be observed
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These are often correlated with observed explanatory information
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Measurement error may lead to endogeneity
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Jointly detremined dependent variables are endogenous
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The endogeneity problem is endemic in social sciences/economics
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In many cases important personal variables cannot be observed
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These are often correlated with observed explanatory information
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Measurement error may lead to endogeneity
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Jointly detremined dependent variables are endogenous
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Solutions to endogeneity problems considered so far:
•Proxy variables method for omitted regressors
•Fixed effects methods if 1) panel data is available, 2) endogeneity is time-constant, and 3) regressors are time-constant
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The endogeneity problem is endemic in social sciences/economics
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In many cases important personal variables cannot be observed
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These are often correlated with observed explanatory information
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Measurement error may lead to endogeneity
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Jointly detremined dependent variables are endogenous
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Solutions to endogeneity problems considered so far:
•Proxy variables method for omitted regressors
•Fixed effects methods if 1) panel data is available, 2) endogeneity is time-constant, and 3) regressors are time-constant
代写Instrumental Variables EstimationStage Least Squares
Instrumental variables method (IV)
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IV is the most well-known method to address endogeneity problems
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Example: Education in a wage equation
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Definition of a instrumental variable:
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1) It does not appear in the regression
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2) It is highly correlated with the endogenous variable
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3) It is uncorrelated with the error term
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Reconsideration of OLS in a simple regression model
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A simple consistency proof for OLS under exogeneity:
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Assume existence of an instrumental variable :
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Inference with IV estimation
Assume homoscedasticity holds: E(u 2|z) = Var(u) = s 2.
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Example: Father‘s education as an IV for education
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Other IVs for education that have been used in the literature:
The number of siblings
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1) Correlated with education because of resource constraints; 2) Uncorrelated with innate ability
College proximity when 18 years old
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Correlated with education because more education if lived near college; 2) Uncorrelated with error
Month of birth
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1) Correlated with education because of compulsory school attendance laws, 2) Uncorrelated with error
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Properties of IV with a poor instrumental variable
IV may be much more inconsistent than OLS if the instrumental variable is not completely exogenous and only weakly related to
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Computing R-squared after IV estimation
where SSR is the sum of squared IV residuals, and SST is the total sum of squares of y.
If SSR > SST, R-squred after IV estimation will be negative.
IV estimation in the multiple regression model
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Conditions for instrumental variable
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1) Does not appear in regression equation
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2) Is uncorrelated with error term
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3) Is partially correlated with endogenous explanatory variable
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Computing IV estimates in the multiple regression case:
Two Stage Least Squares (2SLS) estimation
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It turns out that the IV estimator is equivalent to the following procedure, which has a much more intuitive interpretation:
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Why does Two Stage Least Squares work?
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All variables in the second stage regression are exogenous because y2 was replaced by a prediction based on only exogenous information
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By using the prediction based on exogenous information, y2 is purged of its endogenous part (the part that is related to the error term)
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Properties of Two Stage Least Squares
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The standard errors from the OLS second stage regression are wrong. However, it is not difficult to compute correct standard errors.
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If there is one endogenous variable and one instrument then 2SLS = IV
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The 2SLS estimation should be used if there is more than one endo-genous variable and at least as many instruments
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Example: 2SLS in a wage equation using two instruments
Testing for endogeneity of explanatory variables
Testing overidentification restrictions (testing exogeneity of IVs)
§Suppose s variables are available to be potential IVs for p endogenous variables, but are all the s variables really exogenous?
§If s > p, we can test whether (s - p) of the s instruments are exogenous (i.e., uncorrelated with the structural error u), that is, s - p overidentification restrictions. (If s = p, the model is just identified: we cannot test whether the instruments are exogenous).
§Test procedure:
(a) Estimate the structural model using 2SLS and obtain the residuals.
(b) Regress the residuals on all the exogenous variables and obtain the R 2 to form LM = nR 2 ~ where q = s – p (q ³ 1).
H 0: all IVs are exogenous vs. H 1: at least 1 IV is endogenous
(c) If LM > , reject H 0 at the a significance level.
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Example: Test for overidentification restrictions
Results of OLS regression of the redisuals against exper, exper 2, motheduc and fatheduc:
Compute the LM statistic: LM = nR 2 = 428´0.0009 = 0.3853 (p-value = 0.535 for )
Statistic inference: Can‘t reject H 0 that motheduc and fatheduc are all exogenous.
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Example: Test for overidentification restricitons
Regression of the redisuals against exper, exper 2, motheduc , fatheduc and huseduc
Compute the LM statistic: LM = nR 2 = 428´0.0026 = 1.113 (p-value = 0.574 for )
Statistic inference: Can‘t reject H 0 that motheduc , fatheduc and huseduc are all exogenous.
代写Instrumental Variables EstimationStage Least Squares