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Autori principali: Wang, Yuxin, Frauen, Dennis, Javurek, Emil, Hess, Konstantin, Ma, Yuchen, Feuerriegel, Stefan
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2602.04611
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author Wang, Yuxin
Frauen, Dennis
Javurek, Emil
Hess, Konstantin
Ma, Yuchen
Feuerriegel, Stefan
author_facet Wang, Yuxin
Frauen, Dennis
Javurek, Emil
Hess, Konstantin
Ma, Yuchen
Feuerriegel, Stefan
contents The synthetic control method (SCM) estimates causal effects in panel data with a single-treated unit by constructing a counterfactual outcome as a weighted combination of untreated control units that matches the pre-treatment trajectory. In this paper, we introduce the targeted synthetic control (TSC) method, a new two-stage estimator that directly estimates the counterfactual outcome. Specifically, our TSC method (1) yields a targeted debiasing estimator, in the sense that the targeted updating refines the initial weights to produce more stable weights; and (2) ensures that the final counterfactual estimation is a convex combination of observed control outcomes to enable direct interpretation of the synthetic control weights. TSC is flexible and can be instantiated with arbitrary machine learning models. Methodologically, TSC starts from an initial set of synthetic-control weights via a one-dimensional targeted update through the weight-tilting submodel, which calibrates the weights to reduce bias of weights estimation arising from pre-treatment fit. Furthermore, TSC avoids key shortcomings of existing methods (e.g., the augmented SCM), which can produce unbounded counterfactual estimates. Across extensive synthetic and real-world experiments, TSC consistently improves estimation accuracy over state-of-the-art SCM baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2602_04611
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Targeted Synthetic Control Method
Wang, Yuxin
Frauen, Dennis
Javurek, Emil
Hess, Konstantin
Ma, Yuchen
Feuerriegel, Stefan
Machine Learning
The synthetic control method (SCM) estimates causal effects in panel data with a single-treated unit by constructing a counterfactual outcome as a weighted combination of untreated control units that matches the pre-treatment trajectory. In this paper, we introduce the targeted synthetic control (TSC) method, a new two-stage estimator that directly estimates the counterfactual outcome. Specifically, our TSC method (1) yields a targeted debiasing estimator, in the sense that the targeted updating refines the initial weights to produce more stable weights; and (2) ensures that the final counterfactual estimation is a convex combination of observed control outcomes to enable direct interpretation of the synthetic control weights. TSC is flexible and can be instantiated with arbitrary machine learning models. Methodologically, TSC starts from an initial set of synthetic-control weights via a one-dimensional targeted update through the weight-tilting submodel, which calibrates the weights to reduce bias of weights estimation arising from pre-treatment fit. Furthermore, TSC avoids key shortcomings of existing methods (e.g., the augmented SCM), which can produce unbounded counterfactual estimates. Across extensive synthetic and real-world experiments, TSC consistently improves estimation accuracy over state-of-the-art SCM baselines.
title Targeted Synthetic Control Method
topic Machine Learning
url https://arxiv.org/abs/2602.04611