For the synthetic uncertainty estimate, we use a mean squared error approach relative to the average ACS sampling variance.
For the basic unweighted MoM estimator, and arbitrary collection of tracts, h, the equation is:
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure15.PNG)
We use the following parameterization strategy. Assume the MSE for a given RF-group proportion estimate,
is proportional to
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure17.PNG)
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure16.PNG)
is proportional to
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure17.PNG)
And that the constant of proportionality can be assumed stable over a wide range of RF-groups and tracts. Under the assumption of stability of the multiplicative constant, calculate this constant at an aggregate level, averaging across both RF-groups and tracts.
Under this strategy, modify the previous MoM equation to average across RF-groups as well as tracts:
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure18.PNG)
And calculate the estimated constant at this level of aggregation in two steps:
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure19.PNG)
Then for an individual tract:
![](https://old.socialexplorer.com/pub/ReportData/Metadata/Experimental_Data_Images/Figure20.PNG)
This parameterization provides smooth, and stable, estimates that also satisfy the implicit constraints of the multinomial structure.