Understanding Model Robust And Efficient Covariate Adjustment For Cluster Randomized Experiments
If you are looking for information about Model Robust And Efficient Covariate Adjustment For Cluster Randomized Experiments, you have come to the right place. Fan Li, PhD, Assistant Professor of Biostatistics, Yale School of Public Health
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Detailed Analysis of Model Robust And Efficient Covariate Adjustment For Cluster Randomized Experiments
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