Publication | Closed Access
Using Multivariate Matched Sampling and Regression Adjustment to Control Bias in Observational Studies
710
Citations
23
References
1979
Year
Multivariate Matched SamplingField ExperimentTreatment EffectQuasi-experimentCausal InferenceSocial MatchingEffective PlanBiasRandomized Controlled TrialBiostatisticsPublic HealthStatisticsRegression AdjustmentObservational StudiesSelection BiasHealth PolicyMatching TechniqueMatching MethodsMarginal Structural ModelsMatched Pair DifferencesTime-varying ConfoundingStatistical InferenceMedicineSurvey Methodology
Abstract Monte Carlo methods are used to study the efficacy of multivariate matched sampling and regression adjustment for controlling bias due to specific matching variables X when dependent variables are moderately nonlinear in X. The general conclusion is that nearest available Mahalanobis metric matching in combination with regression adjustment on matched pair differences is a highly effective plan for controlling bias due to X. Key Words: Covariance adjustmentNonrandomized studiesQuasi-experiments
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