TY - JOUR
T1 - Mitigating the choice of the duration in DDMS models through a parametric link
AU - Mendes, Fernando Henrique de Paula e Silva
AU - Turatti, Douglas Eduardo
AU - Pumi, Guilherme
PY - 2024
Y1 - 2024
N2 - One of the most important hyper-parameters in duration-dependent Markov-switching (DDMS) models is the duration of the hidden states. Because there is currently no procedure for estimating this duration or testing whether a given duration is appropriate for a given data set, an ad hoc duration choice must be heuristically justified. In this paper, we propose and examine a methodology that mitigates the choice of duration in DDMS models when forecasting is the goal. The novelty of this paper is the use of the asymmetric Aranda-Ordaz parametric link function to model transition probabilities in DDMS models, instead of the commonly applied logit link. The idea behind this approach is that any incorrect duration choice is compensated for by the parameter in the link, increasing model flexibility. Two Monte Carlo simulations, based on classical applications of DDMS models, are employed to evaluate the methodology. In addition, an empirical investigation is carried out to forecast the volatility of the S&P500, which showcases the capabilities of the proposed model.
AB - One of the most important hyper-parameters in duration-dependent Markov-switching (DDMS) models is the duration of the hidden states. Because there is currently no procedure for estimating this duration or testing whether a given duration is appropriate for a given data set, an ad hoc duration choice must be heuristically justified. In this paper, we propose and examine a methodology that mitigates the choice of duration in DDMS models when forecasting is the goal. The novelty of this paper is the use of the asymmetric Aranda-Ordaz parametric link function to model transition probabilities in DDMS models, instead of the commonly applied logit link. The idea behind this approach is that any incorrect duration choice is compensated for by the parameter in the link, increasing model flexibility. Two Monte Carlo simulations, based on classical applications of DDMS models, are employed to evaluate the methodology. In addition, an empirical investigation is carried out to forecast the volatility of the S&P500, which showcases the capabilities of the proposed model.
KW - Markov-switching;
KW - econometric models
KW - inference under misspecification
KW - parametric estimation
KW - time series analysis
KW - Markov-switching
UR - http://www.scopus.com/inward/record.url?scp=85207507630&partnerID=8YFLogxK
U2 - 10.1080/02664763.2024.2419505
DO - 10.1080/02664763.2024.2419505
M3 - Journal article
SN - 0266-4763
JO - Journal of Applied Statistics
JF - Journal of Applied Statistics
ER -