A new hidden Markov model is proposed for the analysis of cylindrical time series, i.e. bivariate time series of intensities and angles. It allows to segment cylindrical time series according to a finite number of regimes that represent the conditional distributions of the data under specific environmental conditions. The model parsimoniously accommodates for circular-linear correlation, multimodality, skewness and temporal autocorrelation. A computationally efficient Expectation-Maximization algorithm is described to estimate the parameters and a parametric bootstrap routine is provided to compute confidence intervals. These methods are illustrated on cylindrical time series of wave heights and directions
Toroidal time series are temporal sequences of bivariate angular observations that often arise in en...
In this paper, we propose a hidden Markov model for the analysis of the time series of bivariate cir...
A hidden Markov random field is proposed for the analysis of spatial cylindrical series. The model i...
A new hidden Markov model is proposed for the analysis of cylindrical time series, i.e. bivariate ti...
Motivated by segmentation issues in marine studies, a new hidden Markov model is proposed for the an...
Motivated by segmentation issues in marine studies, a novel hiddenMarkov model is propos...
A new hidden Markov random field model is proposed for the analysis of cylindrical spatial series, i...
A hidden Markov model is proposed for segmenting cylindrical time series according to a finite numbe...
Toroidal time series are temporal sequences of bivariate angular observations that often arise in en...
A novel segmentation method is proposed for the analysis of bivariate times eries of intensities an...
Cylindrical hidden Markov fields are proposed as a parsimonious strategy to analyze spatial cylindri...
Motivated by issues of marine data analysis under complex orographic conditions, a multivariate hidd...
The analysis of bivariate space-time series with linear and circular components is complicated by (...
Motivated by segmentation issues in studies of sea current circulation, we describe a hidden Markov ...
Motivated by segmentation issues in studies of sea current circulation, we describe a hidden Markov ...
Toroidal time series are temporal sequences of bivariate angular observations that often arise in en...
In this paper, we propose a hidden Markov model for the analysis of the time series of bivariate cir...
A hidden Markov random field is proposed for the analysis of spatial cylindrical series. The model i...
A new hidden Markov model is proposed for the analysis of cylindrical time series, i.e. bivariate ti...
Motivated by segmentation issues in marine studies, a new hidden Markov model is proposed for the an...
Motivated by segmentation issues in marine studies, a novel hiddenMarkov model is propos...
A new hidden Markov random field model is proposed for the analysis of cylindrical spatial series, i...
A hidden Markov model is proposed for segmenting cylindrical time series according to a finite numbe...
Toroidal time series are temporal sequences of bivariate angular observations that often arise in en...
A novel segmentation method is proposed for the analysis of bivariate times eries of intensities an...
Cylindrical hidden Markov fields are proposed as a parsimonious strategy to analyze spatial cylindri...
Motivated by issues of marine data analysis under complex orographic conditions, a multivariate hidd...
The analysis of bivariate space-time series with linear and circular components is complicated by (...
Motivated by segmentation issues in studies of sea current circulation, we describe a hidden Markov ...
Motivated by segmentation issues in studies of sea current circulation, we describe a hidden Markov ...
Toroidal time series are temporal sequences of bivariate angular observations that often arise in en...
In this paper, we propose a hidden Markov model for the analysis of the time series of bivariate cir...
A hidden Markov random field is proposed for the analysis of spatial cylindrical series. The model i...