Tests how robust the MLE method for independent variables with differential error is when the model for $X$ is less precise. In the main paper, we include $Z$ on the right-hand-side of the `truth_formula`.
In this robustness check, the `truth_formula` is an intercept-only model.
-The stats are in the list named `robustness_1` in the `.RDS` file.
-
+The stats are in the list named `robustness_1` in the `.RDS`
# robustness\_1\_dv.RDS
-Like `robustness\_1.RDS` but with a less precise model for $w_pred$. In the main paper, we included $Z$ in the `outcome_formula`. In this robustness check, we do not.
+Like `robustness\_1.RDS` but with a less precise model for $w_pred$. In the main paper, we included $Z$ in the `proxy_formula`. In this robustness check, we do not.
# robustness_2.RDS
-This is just example 1 with varying levels of classifier accuracy.
+This is just example 1 with varying levels of classifier accuracy indicated by the `prediction_accuracy` variable..
# robustness_2_dv.RDS
-Example 3 with varying levels of classifier accuracy
+Example 3 with varying levels of classifier accuracy indicated by the `prediction_accuracy` variable.
# robustness_3.RDS