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Main Authors: Bakirov, Aslan, Del Prato, Francesco, Zacchia, Paolo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.00776
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author Bakirov, Aslan
Del Prato, Francesco
Zacchia, Paolo
author_facet Bakirov, Aslan
Del Prato, Francesco
Zacchia, Paolo
contents How much do worker skills, firm pay policies, and their interaction contribute to wage inequality? Standard approaches rely on latent fixed effects identified through worker mobility, but sparse networks inflate variance estimates, additivity assumptions rule out complementarities, and the resulting decompositions lack interpretability. We propose TWICE (Tree-based Wage Inference with Clustering and Estimation), a framework that models the conditional wage function directly from observables using gradient-boosted trees, replacing latent effects with interpretable, observable-anchored partitions. This trades off the ability to capture idiosyncratic unobservables for robustness to sampling noise and out-of-sample portability. Applied to Portuguese administrative data, TWICE outperforms linear benchmarks out of sample and reveals that sorting and non-additive interactions explain substantially more wage dispersion than implied by standard AKM estimates.
format Preprint
id arxiv_https___arxiv_org_abs_2601_00776
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TWICE: Tree-based Wage Inference with Clustering and Estimation
Bakirov, Aslan
Del Prato, Francesco
Zacchia, Paolo
General Economics
Economics
How much do worker skills, firm pay policies, and their interaction contribute to wage inequality? Standard approaches rely on latent fixed effects identified through worker mobility, but sparse networks inflate variance estimates, additivity assumptions rule out complementarities, and the resulting decompositions lack interpretability. We propose TWICE (Tree-based Wage Inference with Clustering and Estimation), a framework that models the conditional wage function directly from observables using gradient-boosted trees, replacing latent effects with interpretable, observable-anchored partitions. This trades off the ability to capture idiosyncratic unobservables for robustness to sampling noise and out-of-sample portability. Applied to Portuguese administrative data, TWICE outperforms linear benchmarks out of sample and reveals that sorting and non-additive interactions explain substantially more wage dispersion than implied by standard AKM estimates.
title TWICE: Tree-based Wage Inference with Clustering and Estimation
topic General Economics
Economics
url https://arxiv.org/abs/2601.00776