On the Robustness of Mixture Models in the Presence of Hidden Markov Regimes with Covariate-Dependent Transition Probabilities

Abstract

Este artículo se encuentra publicado en Econometric Theory (e-ISSN: 1469- 4360) https://doi.org/10.1017/S0266466625100017Existe una versión previa de este trabajo publicado como Working Paper N°4 disponible en https://repositorio.utdt.edu/handle/20.500.13098/12845This article studies the robustness of quasi-maximum-likelihood estimation in hidden Markov models when the regime-switching structure is misspecified. Specifically, we examine the case where the data-generating process features a hidden Markov regime sequence with covariate-dependent transition probabilities, but estimation proceeds under a simplified mixture model that assumes regimes are independent and identically distributed. We show that the parameters governing the conditional distribution of the observables can still be consistently estimated under this misspecification, provided certain regularity conditions hold. Our results highlight a practical benefit of using computationally simpler mixture models in settings where regime dependence is complex or difficult to model directly

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