Bounding Causal Effects with Contaminated and Censored Data: Reassessing the Impact of Early Childbearing on Children
Charles Mullin ()
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Charles Mullin: Department of Economics, Vanderbilt University
No 39, Vanderbilt University Department of Economics Working Papers from Vanderbilt University Department of Economics
Abstract:
Empirical researchers commonly use instrumental variable (IV) assumptions to identify treatment effects. However, the credibility of these assumptions are often questionable. This paper considers what can be learned when the assumptions necessary for point identification are violated in two specific ways. First, the data are contaminated, meaning that the exclusion restrictions of the IV estimator hold for only a fraction of the sample. Second, we allow for the data to be censored. After relaxing these assumptions point identification is no longer feasible, but we are able to construct sharp bounds of the treatment effect. In particular, we show that miscarriages can be seen as generating a contaminated and censored sample with which to analyze the impact of a mother's age at conception on the subsequent development of her child. Utilizing the aforementioned bounds, we are able to demonstrate that for non-black children, a delay in their mother's age at first birth is detrimental to their well being.
Date: 2000-09
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http://www.accessecon.com/pubs/VUECON/vu00-w39.pdf First version, 2000 (application/pdf)
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Persistent link: https://EconPapers.repec.org/RePEc:van:wpaper:0039
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