Minimax Estimation of Nonlinear Functionals with Higher Order Influence Functions: Results and Applications
Professor Robins describes a novel approach to point and interval estimation of nonlinear functionals in parametric, semi-, and non-parametric models based on higher order influence functions. Higher order influence functions are higher order U-statistics. The approach applies equally to both n‾√ and non-n‾√ problems. It reproduces results previously obtained by the modern theory of non-parametric inference, produces many new n‾√ and non-n‾√ results, and opens up the ability to perform non-n‾√ inference in complex high dimensional models, such as models…