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The Analysis of Randomized Experiments with Missing Data

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  • Pizer, William

    (Resources for the Future)

  • Imbens, Guido

Abstract

The otherwise straightforward analysis of randomized experiments is often complicated by the presence of missing data. In such situations it is necessary to make assumptions about the dependence of the selection mechanism on treatment, response, and covariates. The widely used approach of assuming that the data is missing at random conditional on treatment and other fully observed covariates is shown to be inadequate to describe data from a randomized experiment when partially observed covariates are also present. This paper presents an alternative to the missing at random model (MAR) which is both consistent with the data and preserves the appeal of MAR. In particular, the proposed family of models minimize the discrepancy with MAR while explaining observed deviations. We apply this approach to data from the Restart job training program in the United Kingdom as well as an artificial data set. Evaluation of the Restart program is not affected by the assumption of MAR; both approaches suggest that the program increased the chances of exiting unemployment by around 9% within six months. However, analysis of the artificial data demonstrates that assuming MAR can easily lead to erroneous conclusions.

Suggested Citation

  • Pizer, William & Imbens, Guido, 2000. "The Analysis of Randomized Experiments with Missing Data," RFF Working Paper Series dp-00-19, Resources for the Future.
  • Handle: RePEc:rff:dpaper:dp-00-19
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    File URL: http://www.rff.org/RFF/documents/RFF-DP-00-19.pdf
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    References listed on IDEAS

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    1. Manski, Charles F., 1992. "Identification Problems In The Social Sciences," SSRI Workshop Series 292716, University of Wisconsin-Madison, Social Systems Research Institute.
    2. Imbens, G.W. & Rubin, D. & Sacerdote, B., 1999. "Estimating the effect of unearned income on labor supply, earnings, savings and consumption : Evidence from a survey of lottery players," Other publications TiSEM 43407245-d868-4cec-b289-c, Tilburg University, School of Economics and Management.
    3. Christian Gourieroux & Alain Monfort, 1981. "On the Problem of Missing Data in Linear Models," The Review of Economic Studies, Review of Economic Studies Ltd, vol. 48(4), pages 579-586.
    4. Peter Dolton & Donal O'Neill, 1996. "The Restart Effect and the Return to Full‐Time Stable Employment," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 159(2), pages 275-288, March.
    5. Dolton, Peter & O'Neill, Donal, 1996. "Unemployment Duration and the Restart Effect: Some Experimental Evidence," Economic Journal, Royal Economic Society, vol. 106(435), pages 387-400, March.
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    Cited by:

    1. Molinari, Francesca, 2010. "Missing Treatments," Journal of Business & Economic Statistics, American Statistical Association, vol. 28(1), pages 82-95.

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