Quantile hidden semi-Markov models for multivariate time series

被引:0
|
作者
Luca Merlo
Antonello Maruotti
Lea Petrella
Antonio Punzo
机构
[1] Sapienza University of Rome,Department of Statistical Sciences
[2] University of Bergen,Department of Mathematics
[3] LUMSA University,Department of Law, Economics, Political Sciences and Modern Languages
[4] Sapienza University of Rome,MEMOTEF Department
[5] University of Catania,Department of Economics and Business
来源
Statistics and Computing | 2022年 / 32卷
关键词
EM algorithm; Latent process; Maximum likelihood; Multivariate asymmetric Laplace distribution; Quantile regression; Sojourn distribution;
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学科分类号
摘要
This paper develops a quantile hidden semi-Markov regression to jointly estimate multiple quantiles for the analysis of multivariate time series. The approach is based upon the Multivariate Asymmetric Laplace (MAL) distribution, which allows to model the quantiles of all univariate conditional distributions of a multivariate response simultaneously, incorporating the correlation structure among the outcomes. Unobserved serial heterogeneity across observations is modeled by introducing regime-dependent parameters that evolve according to a latent finite-state semi-Markov chain. Exploiting the hierarchical representation of the MAL, inference is carried out using an efficient Expectation-Maximization algorithm based on closed form updates for all model parameters, without parametric assumptions about the states’ sojourn distributions. The validity of the proposed methodology is analyzed both by a simulation study and through the empirical analysis of air pollutant concentrations in a small Italian city.
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