In this paper, we propose a novel method for causal inference within the counterfactual and synthetic control framework, called the Covariate-projected Principal Component Analysis (CSC-CPCA) method. Our approach accommodates the Generalized Synthetic Control (GSC) method as a special case, thereby inheriting its key advantage of relaxing critical assumptions such as the parallel trends requirement in difference-in-differences designs. Beyond this, CSC-CPCA offers several improvements over GSC. By projecting covariates onto factor loadings through a projection matrix $\Gamma$, the method performs natural dimension reduction, enabling effective handling of high-dimensional datasets while keeping the model parsimonious. This covariate-projection also reduces exposure to model misspecification and improves predictive accuracy. In simulation studies, CSC-CPCA method demonstrates lower bias in the presence of unobserved covariates compared to mainstream alternatives. In an empirical application, we employ CSC-CPCA to evaluate the effect of Brexit on foreign direct investment in the United Kingdom, where the results highlight both the robustness and practical value of the method.

Essays in causal inference methods designed for financial economics

WANG, CONG
2026

Abstract

In this paper, we propose a novel method for causal inference within the counterfactual and synthetic control framework, called the Covariate-projected Principal Component Analysis (CSC-CPCA) method. Our approach accommodates the Generalized Synthetic Control (GSC) method as a special case, thereby inheriting its key advantage of relaxing critical assumptions such as the parallel trends requirement in difference-in-differences designs. Beyond this, CSC-CPCA offers several improvements over GSC. By projecting covariates onto factor loadings through a projection matrix $\Gamma$, the method performs natural dimension reduction, enabling effective handling of high-dimensional datasets while keeping the model parsimonious. This covariate-projection also reduces exposure to model misspecification and improves predictive accuracy. In simulation studies, CSC-CPCA method demonstrates lower bias in the presence of unobserved covariates compared to mainstream alternatives. In an empirical application, we employ CSC-CPCA to evaluate the effect of Brexit on foreign direct investment in the United Kingdom, where the results highlight both the robustness and practical value of the method.
26-gen-2026
Inglese
RAGUSA, GIUSEPPE
Università degli Studi di Roma "La Sapienza"
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/357527
Il codice NBN di questa tesi è URN:NBN:IT:UNIROMA1-357527