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Matching the gold standard: Comparing experimental and non-experimental evaluation techniques for a geographically targeted program

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  • Sudhanshu Handa
  • John Maluccio

Abstract

We compare non-experimental impact estimates based on matching methods with those from a randomized evaluation to determine whether the non-experimental approach can “match” the so-called gold standard. The social experiment we use was carried out to evaluate a geographically targeted conditional cash transfer antipoverty program in Nicaragua. The outcomes we assess include several components of household expenditure and a variety of children’s health outcomes including breast feeding, vaccinations, and morbidity. We find that using each of the following improves performance of matching for these outcomes: 1) geographically proximate comparison samples; 2) stringent common support requirements; and 3) both geographic- and household-level matching variables. Even for a geographically targeted program, in which the selection is at the geographic-, rather than at the individual- or household-level, and in which it is not possible to find comparison individuals or households in the program locales, matching can perform reasonably well. The results also suggest that the techniques may be more promising for evaluating the more easily measured individual-level binary outcomes, than for outcomes that are more difficult to measure, such as expenditure.

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  • Sudhanshu Handa & John Maluccio, 2008. "Matching the gold standard: Comparing experimental and non-experimental evaluation techniques for a geographically targeted program," Middlebury College Working Paper Series 0813, Middlebury College, Department of Economics.
  • Handle: RePEc:mdl:mdlpap:0813
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    3. Bernd Hardeweg & Lukas Menkhoff & Hermann Waibel, 2013. "Experimentally Validated Survey Evidence on Individual Risk Attitudes in Rural Thailand," Economic Development and Cultural Change, University of Chicago Press, vol. 61(4), pages 859-888.
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    6. Smith, Lisa C. & Khan, Faheem & Frankenberger, Timothy R. & Wadud, A.K.M. Abdul, 2013. "Admissible Evidence in the Court of Development Evaluation? The Impact of CARE’s SHOUHARDO Project on Child Stunting in Bangladesh," World Development, Elsevier, vol. 41(C), pages 196-216.
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    8. Rafael Perez Ribas & Fabio Veras Soares & Clarissa Gondim Teixeira & Elydia Silva & Guilherme Issamu Hirata, 2010. "Beyond Cash: Assessing Externality and Behaviour Effects of Non-Experimental Cash Transfers," Working Papers 65, International Policy Centre for Inclusive Growth.
    9. Ferraro, Paul J. & Miranda, Juan José, 2014. "The performance of non-experimental designs in the evaluation of environmental programs: A design-replication study using a large-scale randomized experiment as a benchmark," Journal of Economic Behavior & Organization, Elsevier, vol. 107(PA), pages 344-365.
    10. Vivian C. Wong & Peter M. Steiner & Kylie L. Anglin, 2018. "What Can Be Learned From Empirical Evaluations of Nonexperimental Methods?," Evaluation Review, , vol. 42(2), pages 147-175, April.
    11. Richard de Groot & Sudhanshu Handa & Mike Park & Robert D. Osei & Isaac Osei-Akoto & Luigi Peter Ragno & Garima Bhalla, 2015. "Heterogeneous impacts of an unconditioal cash transfer programme on schooling: evidence from the Ghana LEAP programme," Papers inwopa793, Innocenti Working Papers.
    12. Matthew Walsh & Santiago Poy & Ianina Tuñón, 2020. "The Impact of Health Conditionalities in Conditional Cash Transfer Programmes: the case of the AUH in Argentina," Revista Desarrollo y Sociedad, Universidad de los Andes,Facultad de Economía, CEDE, vol. 85(4), June.
    13. Bruno Martorano & Sudhanshu Handa & Carolyn Halpern & Harsha Thirumurthy, 2014. "Subjective Well-being, Risk Perceptions and Time Discounting: Evidence from a large-scale cash transfer programme," Papers inwopa717, Innocenti Working Papers.

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