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Author: Ham, John C.
Resulting in 2 citations.
1. Ham, John C.
Li, Xianghong
Reagan, Patricia Benton
Matching and Semi-parametric IV Estimation, a Distance-Based Measure of Migration, and the Wages of Young Men
Journal of Econometrics 161, 2 (April 2011): 208-227.
Also: http://www.sciencedirect.com/science/article/pii/S0304407610002460
Cohort(s): NLSY79
Publisher: Elsevier
Keyword(s): College Graduates; Male Sample; Migration; School Dropouts; Statistical Analysis; Wage Growth

Our paper estimates the effect of US internal migration on wage growth for young men between their first and second job. Our analysis of migration extends previous research by: (i) exploiting the distance-based measures of migration in the National Longitudinal Surveys of Youth 1979 (NLSY79); (ii) allowing the effect of migration to differ by schooling level and (iii) using propensity score matching to estimate the average treatment effect on the treated (ATET) for movers and (iv) using local average treatment effect (LATE) estimators with covariates to estimate the average treatment effect (ATE) and ATET for compliers.

We believe the Conditional Independence Assumption (CIA) is reasonable for our matching estimators since the NLSY79 provides a relatively rich array of variables on which to match. Our matching methods are based on local linear, local cubic, and local linear ridge regressions. Local linear and local ridge regression matching produce relatively similar point estimates and standard errors, while local cubic regression matching badly over-fits the data and provides very noisy estimates.

We use the bootstrap to calculate standard errors. Since the validity of the bootstrap has not been investigated for the matching estimators we use, and has been shown to be invalid for nearest neighbor matching estimators, we conduct a Monte Carlo study on the appropriateness of using the bootstrap to calculate standard errors for local linear regression matching. The data generating processes in our Monte Carlo study are relatively rich and calibrated to match our empirical models or to test the sensitivity of our results to the choice of parameter values. The estimated standard errors from the bootstrap are very close to those from the Monte Carlo experiments, which lends support to our using the bootstrap to calculate standard errors in our setting.

From the matching estimators we find a significant positive effect of migration on the wage growth of college graduates, and a marginally significant negative effect for high school dropouts. We do not find any significant effects for other educational groups or for the overall sample. Our results are generally robust to changes in the model specification and changes in our distance-based measure of migration. We find that better data matters; if we use a measure of migration based on moving across county lines, we overstate the number of moves, while if we use a measure based on moving across state lines, we understate the number of moves. Further, using either the county or state measures leads to much less precise estimates.

We also consider semi-parametric LATE estimators with covariates (Frolich 2007), using two sets of instrumental variables. We precisely estimate the proportion of compliers in our data, but because we have a small number of compliers, we cannot obtain precise LATE estimates.

Bibliography Citation
Ham, John C., Xianghong Li and Patricia Benton Reagan. "Matching and Semi-parametric IV Estimation, a Distance-Based Measure of Migration, and the Wages of Young Men." Journal of Econometrics 161, 2 (April 2011): 208-227.
2. Ham, John C.
Reagan, Patricia Benton
Li, Xianghong
Propensity Score Matching, a Distance-Based Measure of Migration, and the Wage Growth of Young Men
Working Paper No. 05.13, Institute for Economic Policy Research, December 2004.
Also: http://papers.ssrn.com/sol3/papers.cfm?abstract_id=671062
Cohort(s): NLSY79
Publisher: Institute for Economic Policy Research
Keyword(s): College Graduates; High School Dropouts; Migration Patterns; Wage Growth

Permission to reprint the abstract has not been received from the publisher.

Our analysis of migration differs from previous research in three important aspects. First, we exploit the confidential geocoding in the NLSY79 to obtain a distance-based measure. Second, we let the effect of migration on wage growth differ by schooling level. Third, we use propensity score matching to measure the effect of migration on the wages of those who move. We develop an economic model and use it to (i) assess the appropriateness of matching as an econometric method for studying migration and (ii) choose the conditioning variables used in the matching procedure. Our data set provides a rich array of variables on which to match. We find a significant effect of migration on the wage growth of college graduates of 10 percent, and a marginally significant effect for high school dropouts of -12 percent. If we use either a measure of migration based on moving across county lines or state lines, the significant effects of migration for college graduates and dropouts disappear.
Bibliography Citation
Ham, John C., Patricia Benton Reagan and Xianghong Li. "Propensity Score Matching, a Distance-Based Measure of Migration, and the Wage Growth of Young Men." Working Paper No. 05.13, Institute for Economic Policy Research, December 2004.