Non-Homogeneous Markov-Switching Generalized Additive Models for Location, Scale, and Shape
By: Katharina Ammann, Timo Adam, Jan-Ole Koslik
Potential Business Impact:
Helps predict stock prices by seeing how news changes trends.
We propose an extension of Markov-switching generalized additive models for location, scale, and shape (MS-GAMLSS) that allows covariates to influence not only the parameters of the state-dependent distributions but also the state transition probabilities. Traditional MS-GAMLSS, which combine distributional regression with hidden Markov models, typically assume time-homogeneous (i.e., constant) transition probabilities, thereby preventing regime shifts from responding to covariate-driven changes. Our approach overcomes this limitation by modeling the transition probabilities as smooth functions of covariates, enabling a flexible, data-driven characterization of covariate-dependent regime dynamics. Estimation is carried out within a penalized likelihood framework, where automatic smoothness selection controls model complexity and guards against overfitting. We evaluate the proposed methodology through simulations and applications to daily Lufthansa stock prices and Spanish energy prices. Our results show that incorporating macroeconomic indicators into the transition probabilities yields additional insights into market dynamics. Data and R code to reproduce the results are available online.
Similar Papers
The Mixed-Sparse-Smooth-Model Toolbox (MSSM): Efficient Estimation and Selection of Large Multi-Level Statistical Models
Methodology
Helps computers build complex models faster.
Multivariate longitudinal modeling of cross-sectional and lagged associations between a continuous time-varying endogenous covariate and a non-Gaussian outcome
Methodology
Helps doctors understand disease changes better.
Extending finite mixture models with skew-normal distributions and hidden Markov models for time series
Methodology
Finds hidden patterns in changing data.