rbbnp - A Bias Bound Approach to Non-Parametric Inference
A novel bias-bound approach for non-parametric inference
is introduced, focusing on both density and conditional
expectation estimation. It constructs valid confidence
intervals that account for the presence of a non-negligible
bias and thus make it possible to perform inference with
optimal mean squared error minimizing bandwidths. This package
is based on Schennach (2020) <doi:10.1093/restud/rdz065>.