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Doble aprenentatge automàtic×Efectes de tractament heterogenis (CATE / Meta-aprenents)×Random Forest×
CampInferència causalInferència causalAprenentatge automàtic
FamíliaMachine learningRegression modelMachine learning
Any d'origen201820182001
Autor originalVictor Chernozhukov et al.Wager & Athey (causal forest); Künzel et al. (meta-learners)Breiman, L.
TipusSemiparametric causal estimationCausal machine-learning frameworkEnsemble (bagging of decision trees)
Font seminalChernozhukov, V., Chetverikov, D., Demirer, M., Duflo, E., Hansen, C., Newey, W., & Robins, J. (2018). Double/debiased machine learning for treatment and structural parameters. The Econometrics Journal, 21(1), C1–C68. DOI ↗Wager, S. & Athey, S. (2018). Estimation and Inference of Heterogeneous Treatment Effects using Random Forests. Journal of the American Statistical Association. DOI ↗Breiman, L. (2001). Random Forests. Machine Learning, 45, 5–32. DOI ↗
ÀliesDebiased Machine Learning, Neyman Orthogonal Score Estimation, Partialing-Out Lasso, Çift Makine Öğrenmesiconditional average treatment effect, CATE, meta-learners, causal forestRastgele Orman (Random Forest), rastgele orman, random decision forest, bagged tree ensemble
Relacionats354
ResumDouble/Debiased Machine Learning (DML), introduced by Chernozhukov et al. (2018), is a semiparametric framework for estimating causal or structural parameters in the presence of high-dimensional controls. It uses flexible machine learning methods to model nuisance functions—the conditional expectations of the outcome and the treatment given covariates—and then constructs a debiased estimator of the target parameter that achieves root-n consistency and valid inference despite the regularization bias inherent in high-dimensional settings.Heterogeneous Treatment Effects is a machine-learning framework that estimates how a treatment effect varies across individuals — the conditional average treatment effect (CATE). It bundles meta-learner strategies such as the T-Learner, S-Learner, X-Learner and R-Learner alongside the causal forest of Wager and Athey (2018) and Künzel et al. (2019).Random Forest is an ensemble learning method, introduced by Leo Breiman in 2001, that grows many decision trees on bootstrap samples of the data and combines their votes to produce strong classification and regression. By pooling many slightly different trees, it produces more accurate and more stable predictions than any single tree.
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ScholarGateCompara mètodes: Double Machine Learning · Heterogeneous Treatment Effects · Random Forest. Recuperat el 2026-06-18 de https://scholargate.app/ca/compare