HCPclust - Hierarchical Conformal Prediction for Clustered Data with
Missing Responses
Implements hierarchical conformal prediction for clustered
data with missing responses. The method uses repeated
cluster-level splitting and within-cluster subsampling to
accommodate dependence, and inverse-probability weighting to
correct distribution shift induced by missingness. Conditional
densities are estimated by inverting fitted conditional
quantiles (linear quantile regression or quantile regression
forests), and p-values are aggregated across resampling and
splitting steps using the Cauchy combination test.