version 0.1.0
Features
- implemented population mean estimation using doubly robust, inverse probability weighting and mass imputation methods
- implemented inverse probability weighting models with Maximum Likelihood Estimation and Generalized Estimating Equations methods with
logit
, complementary log-log
and probit
link functions.
- implemented
generalized linear models
, nearest neighbours
and predictive mean matching
methods for Mass Imputation
- implemented bias correction estimators for doubly-robust approach
- implemented estimation methods when vector of population means/totals is available
- implemented variables selection with
SCAD
, LASSO
and MCP
penalization equations
- implemented
analytic
and bootstrap
(with parallel computation - doSNOW
package) variance for described estimators
- added control parameters for models
- added S3 methods for object of
nonprob
class such as
nobs
for samples size
pop.size
for population size estimation
residuals
for residuals of the inverse probability weighting model
cooks.distance
for identifying influential observations that have a significant impact on the parameter estimates
hatvalues
for measuring the leverage of individual observations
logLik
for computing the log-likelihood of the model,
AIC
(Akaike Information Criterion) for evaluating the model based on the trade-off between goodness of fit and complexity, helping in model selection
BIC
(Bayesian Information Criterion) for a similar purpose as AIC but with a stronger penalty for model complexity
confint
for calculating confidence intervals around parameter estimates
vcov
for obtaining the variance-covariance matrix of the parameter estimates
deviance
for assessing the goodness of fit of the model
Unit tests
- added unit tests for IPW estimators.
Github repository
- added automated
R-cmd
check
Documentation
- added documentation for
nonprob
function.