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Statistics and Its Interface
Volume 17 (2024)
Number 3
A selective review on conditional density estimation
Pages: 549 – 564
DOI: https://dx.doi.org/10.4310/23-SII821
Authors
Abstract
Conditional density estimation is a fundamental research problem in data science, naturally arising in a variety of applications such as semiparametric statistics, causal inference and machine learning. However, methodology development for conditional density estimation has received rather limited attention, in particular in comparison with conditional expectation estimation. In this review paper, we survey available nonparametric methods, as well as their corresponding software, in the literature for conditional density estimation. Specifically, we focus on nonparametric methods based on kernel smoothing, orthogonal basis expansion, and a highly adaptive lasso estimation strategy. We compare numerical performance of these methods in a comprehensive simulation study as well as in three benchmark data sets.
Keywords
conditional density estimation, kernel smoothing, orthogonal basis expansion, highly adaptive lasso estimation
Received 29 November 2022
Accepted 3 September 2023
Published 19 July 2024