The aim of this work is to find individual and joint change-points in a large multivariate database of climate data. We model monthly values of precipitation, minimum and maximum temperature recorded in 360 stations covering all Italy for 60 years (12 × 60 months). The proposed three variate Gaussian change-point model exploits the Hierarchical Dirichlet process, allowing for a formalization that lets us estimate a different change-point model for each station. As stations possibly share some of the parameters of the trivariate normal emission distribution, this model framework provides an original definition of the change-points corresponding to changes in any subset of the 9 model parameters
HISTALP, a large multi-variable dataset consisting of monthly quality-checked and homogenised secula...
International audienceClimate change impact studies necessitate the estimation of climate variables ...
International audienceTime series in statistical climatology are classically represented by additive...
The aim of this work is to find individual and joint change-points in a large multivariate database ...
Motivated by real-world data of monthly values of precipitation, minimum, and maximum temperature re...
We introduce a Bayesian multivariate hierarchical framework to estimate a space-time process model ...
In mountain regions, important differences in the time trends of climate series can be detected even...
Classification of meteorological time series is important for the analysis of the climate variabilit...
This work presents the statistical analysis of time series of monthly average temperatures in severa...
Classification of meteorological time series is important for the analysis of the climate variabilit...
This paper develops a new approach to change-point modeling that allows the number of change-points ...
In this work the application of two novel synthetic multivariate indexes for characterizing and inte...
This thesis presents complex statistical models, based on novel methodologies (e.g. machine learning...
The awareness of the importance of data quality and homogeneity issues in the correct detection of c...
The Italian monthly temperature (mean, maximum and minimum) and precipitation secular data set was u...
HISTALP, a large multi-variable dataset consisting of monthly quality-checked and homogenised secula...
International audienceClimate change impact studies necessitate the estimation of climate variables ...
International audienceTime series in statistical climatology are classically represented by additive...
The aim of this work is to find individual and joint change-points in a large multivariate database ...
Motivated by real-world data of monthly values of precipitation, minimum, and maximum temperature re...
We introduce a Bayesian multivariate hierarchical framework to estimate a space-time process model ...
In mountain regions, important differences in the time trends of climate series can be detected even...
Classification of meteorological time series is important for the analysis of the climate variabilit...
This work presents the statistical analysis of time series of monthly average temperatures in severa...
Classification of meteorological time series is important for the analysis of the climate variabilit...
This paper develops a new approach to change-point modeling that allows the number of change-points ...
In this work the application of two novel synthetic multivariate indexes for characterizing and inte...
This thesis presents complex statistical models, based on novel methodologies (e.g. machine learning...
The awareness of the importance of data quality and homogeneity issues in the correct detection of c...
The Italian monthly temperature (mean, maximum and minimum) and precipitation secular data set was u...
HISTALP, a large multi-variable dataset consisting of monthly quality-checked and homogenised secula...
International audienceClimate change impact studies necessitate the estimation of climate variables ...
International audienceTime series in statistical climatology are classically represented by additive...