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. Author manuscript; available in PMC: 2015 Feb 20.
Published in final edited form as: Stat Med. 2013 Sep 9;33(4):555–568. doi: 10.1002/sim.5969

Table III.

Simulation results for a binary endpoint based on 2000 Monte Carlo data sets of size 1000. For IPW, a logistic regression for the propensity score includes all 20 X variables is fitted to the data. For ANCOVA, all 20 X variables are included in the model. For OPT, all 20 X variables are included in separate logistic outcome regression models for the two arms. SEM is the standard error based on Monte Carlo samples; SEA is the average of large sample standard error estimates over the Monte Carlo samples. Cov.Prob. is the coverage probability of the 95% confidence interval based on large-sample normal approximation. (Δ01) are the true proportions in the control and intervention arms, respectively.

01) SEM/SEA (×10000) Cov. Prob.
UNADJ IPW ANCOVA OPT UNADJ IPW ANCOVA OPT
(0.1, 0.15) k=5 209/209 180/174 176/174 157/152 0.950 0.941 0.948 0.943
10 208/209 174/174 170/174 152/150 0.948 0.952 0.955 0.946
20 208/204 177/174 173/174 155/149 0.950 0.943 0.946 0.941
(0.3, 0.39) k=5 288/300 214/220 214/220 200/205 0.965 0.959 0.966 0.962
10 301/300 227/220 224/220 210/205 0.942 0.944 0.946 0.947
20 296/300 223/220 220/220 209/203 0.953 0.945 0.949 0.939