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xtdml: Double Machine Learning Estimation to Static Panel Data Models with Fixed Effects in R

Published 17 Dec 2025 in econ.EM, stat.ME, and stat.ML | (2512.15965v1)

Abstract: The double machine learning (DML) method combines the predictive power of machine learning with statistical estimation to conduct inference about the structural parameter of interest. This paper presents the R package xtdml, which implements DML methods for partially linear panel regression models with low-dimensional fixed effects, high-dimensional confounding variables, proposed by Clarke and Polselli (2025). The package provides functionalities to: (a) learn nuisance functions with machine learning algorithms from the mlr3 ecosystem, (b) handle unobserved individual heterogeneity choosing among first-difference transformation, within-group transformation, and correlated random effects, (c) transform the covariates with min-max normalization and polynomial expansion to improve learning performance. We showcase the use of xtdml with both simulated and real longitudinal data.

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