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Education Experiments in Latin America: Empirical Evidence to Guide Evaluation Design

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  • Steven Glazerman
  • Larissa Campuzano
  • Nancy Murray

Abstract

Randomized experiments involving education interventions are typically implemented as cluster randomized trials, with schools serving as clusters. To design such a study, it is critical to understand the degree to which learning outcomes vary between versus within clusters (schools), specifically the intraclass correlation coefficient. It is also helpful to anticipate the benefits, in terms of statistical power, of collecting household data, testing students at baseline, or relying on administrative data on previous cohorts from the same school. We use data from multiple cluster-randomized trials in four Latin American countries to provide information on the intraclass correlations in early grade literacy outcomes. We also describe the proportion of variance explained by different types of covariates. These parameters will help future researchers conduct statistical power analysis, estimate the required sample size, and determine the necessity of collecting different types of baseline data such as child assessments, administrative data at the school level, or household surveys.

Suggested Citation

  • Steven Glazerman & Larissa Campuzano & Nancy Murray, 2025. "Education Experiments in Latin America: Empirical Evidence to Guide Evaluation Design," Evaluation Review, , vol. 49(1), pages 115-146, February.
  • Handle: RePEc:sae:evarev:v:49:y:2025:i:1:p:115-146
    DOI: 10.1177/0193841X241241354
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    References listed on IDEAS

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    1. repec:mpr:mprres:5863 is not listed on IDEAS
    2. Larry V. Hedges & E. C. Hedberg, 2013. "Intraclass Correlations and Covariate Outcome Correlations for Planning Two- and Three-Level Cluster-Randomized Experiments in Education," Evaluation Review, , vol. 37(6), pages 445-489, December.
    3. Zuchao Shen & Benjamin Kelcey, 2020. "Optimal Sample Allocation Under Unequal Costs in Cluster-Randomized Trials," Journal of Educational and Behavioral Statistics, , vol. 45(4), pages 446-474, August.
    4. David Seidenfeld & Sudhanshu Handa & Thomas de Hoop & Mitchell Morey, 2023. "Intraclass Correlations Values in International Development: Evidence Across Commonly Studied Domains in sub-Saharan Africa," Evaluation Review, , vol. 47(5), pages 786-819, October.
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