Automatic Debiased Machine Learning of Structural Parameters with General Conditional Moments
Facundo Arga\~naraz

TL;DR
This paper introduces a machine learning-based method to automatically construct orthogonal moments for estimating structural parameters in models with conditional moment restrictions, ensuring debiased inference.
Contribution
It develops a novel approach to estimate Neyman-orthogonal moments using Lasso to solve functional equations, enabling straightforward implementation and valid inference.
Findings
The method achieves $\
The estimator is $\
Monte Carlo experiments validate the approach's effectiveness.
Abstract
This paper proposes a method to automatically construct or estimate Neyman-orthogonal moments in general models defined by a finite number of conditional moment restrictions (CMRs), with possibly different conditioning variables and endogenous regressors. CMRs are allowed to depend on non-parametric components, which might be flexibly modeled using Machine Learning tools, and non-linearly on finite-dimensional parameters. The key step in this construction is the estimation of Orthogonal Instrumental Variables (OR-IVs) -- "residualized" functions of the conditioning variables, which are then combined to obtain a debiased moment. We argue that computing OR-IVs necessarily requires solving potentially complicated functional equations, which depend on unknown terms. However, by imposing an approximate sparsity condition, our method finds the solutions to those equations using a Lasso-type…
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Taxonomy
TopicsStatistical Methods and Inference · Monetary Policy and Economic Impact · Italy: Economic History and Contemporary Issues
