Tuning Parameter-Free Nonparametric Density Estimation from Tabulated Summary Data
Econometrics
2024-02-15 v3
Abstract
Administrative data are often easier to access as tabulated summaries than in the original format due to confidentiality concerns. Motivated by this practical feature, we propose a novel nonparametric density estimation method from tabulated summary data based on maximum entropy and prove its strong uniform consistency. Unlike existing kernel-based estimators, our estimator is free from tuning parameters and admits a closed-form density that is convenient for post-estimation analysis. We apply the proposed method to the tabulated summary data of the U.S. tax returns to estimate the income distribution.
Keywords
Cite
@article{arxiv.2204.05480,
title = {Tuning Parameter-Free Nonparametric Density Estimation from Tabulated Summary Data},
author = {Ji Hyung Lee and Yuya Sasaki and Alexis Akira Toda and Yulong Wang},
journal= {arXiv preprint arXiv:2204.05480},
year = {2024}
}