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Optimal design when outcome values are not missing at random

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Figure

Table 1: Simulation outputs of A- and D-optimal designs across 100,000 simulated data
Figure 1: Mean squared error and bias of the estimates that were computed using the
Table 2: The first column from the left shows the optimal designs that assume a MAR
Figure 2: “+” correspond to A-optimal designs, “□” correspond to D-optimal designs
+5

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