Topic

We propose a simulated nonparametric minimum-distance estimator for the estimation of parameters of complex simulation models. To address the limitations of traditional simulation-based econometric techniques in cases where the stochastic equicontinuity condition is violated, we approximate the distance between real-world observations and data simulated from a theoretical model using a series of basis functions, allowing for the estimation of model parameters without relying on specific auxiliary models or moment selection. We study the consistency and rates of convergence of our estimator. We investigate its performance through Monte Carlo experiments and an empirical application to financial market data.

2025.2026 32

Dettagli

  • Data: 14 May 2026
  • Ora: 11:00
  • Luogo: Room 9, Padiglione Monte Generoso
  • Relatore: Mario Martinoli