DHSr - Create Large Scale Repeated Regression Summary Statistics
Dataset and Visualization Seamlessly
Mapping, spatial analysis, and statistical modeling of
microdata from sources such as the Demographic and Health
Surveys <https://www.dhsprogram.com/> and Integrated Public Use
Microdata Series <https://www.ipums.org/>. It can also be
extended to other datasets. The package supports spatial
correlation index construction and visualization, along with
empirical Bayes approximation of regression coefficients in a
multistage setup. The main functionality is repeated
regression — for example, if we have to run regression for n
groups, the group ID should be vertically composed into the
variable for the parameter `location_var`. It can perform
various kinds of regression, such as Generalized Regression
Models, logit, probit, and more. Additionally, it can
incorporate interaction effects. The key benefit of the package
is its ability to store the regression results performed
repeatedly on a dataset by the group ID, along with respective
p-values and map those estimates.