Optimization Strategy for the Modeling and Estimation of Interactive Effects Cover Image

Optimization Strategy for the Modeling and Estimation of Interactive Effects
Optimization Strategy for the Modeling and Estimation of Interactive Effects

Author(s): Hu Xiaohui
Subject(s): Politics, Economy, Business Economy / Management, Micro-Economics, Public Administration, Economic policy, Methodology and research technology
Published by: Vysoká škola ekonomická v Praze
Keywords: Interactive effects; model misspecification; regularization bias; post-double selection

Summary/Abstract: Modeling policy effects in the context of high-dimensional data requires a balanced consideration of omitted interaction bias and overfitting problems. This paper investigates the role of machine learning algorithms in stabilizing estimates and demonstrates the possible regularization bias caused by common LASSO methods. To overcome the three problems simultaneously, postdouble selection is used to screen for the interaction terms that need to be included in the model, and the variance estimates are expanded to measure the uncertainty of the interaction effects and marginal effects. Monte Carlo simulations analyze the main factors affecting conditional and non-linear relationships: covariance and sample size. The results of empirical examples show that different model settings and estimation methods can lead to observable differences in the conclusion of treatment effect heterogeneity, and in general, post-double selection has better performance than other estimation methods.

  • Issue Year: 33/2024
  • Issue No: 3
  • Page Range: 261-276
  • Page Count: 16
  • Language: English
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