Clustering has received much attention in Statistics and Machine learning with the aim of developing statistical models and autonomous algorithms which are capable of acquiring information from raw data in order to perform exploratory analysis.Several techniques have been developed to cluster sampled univariate vectors only considering the average value over the whole period and as such they have not been able to explore fully the underlying distribution as well as other features of the data, especially in presence of structured time series. We propose a model-based clustering technique that is based on quantile regression permitting us to cluster bivariate time series at different quantile levels. We model the within cluster density using ...
Satellite images time series have been used to study land surface, such as identification of forest,...
International audienceNowadays, remote sensing technologies produce huge amounts of satellite images...
Financiado para publicación en acceso aberto: Universidade da Coruña/CISUG[Abstract] Clustering of m...
Clustering has received much attention in Statistics and Machine learning with the aim of developing...
The use of water quality indicators is of crucial importance to identify risks to the environment, s...
The use of water quality indicators is of crucial importance to identify risks to the environment, s...
The use of water quality indicators is of crucial importance to identify risks to the environment, s...
This work presents a functional clustering procedure applied to environmental time series of a physi...
A large research literature has developed methodologies for identifying clusters of units in a spati...
Water quality indicators are important to identify risks to the environment, society and human healt...
A key issue in cluster analysis is determining a proper dissimilarity measure between two data objec...
Satellite images time series have been used to study land surface, such as identification of forest,...
Adam T, Langrock R, Kneib T. Model-based Clustering of Time Series Data: a Flexible Approach using N...
International audienceSatellite images allow the acquisition of large-scale ground vegetation. Image...
International audienceNowadays, satellite images are widely exploited in many fields including agric...
Satellite images time series have been used to study land surface, such as identification of forest,...
International audienceNowadays, remote sensing technologies produce huge amounts of satellite images...
Financiado para publicación en acceso aberto: Universidade da Coruña/CISUG[Abstract] Clustering of m...
Clustering has received much attention in Statistics and Machine learning with the aim of developing...
The use of water quality indicators is of crucial importance to identify risks to the environment, s...
The use of water quality indicators is of crucial importance to identify risks to the environment, s...
The use of water quality indicators is of crucial importance to identify risks to the environment, s...
This work presents a functional clustering procedure applied to environmental time series of a physi...
A large research literature has developed methodologies for identifying clusters of units in a spati...
Water quality indicators are important to identify risks to the environment, society and human healt...
A key issue in cluster analysis is determining a proper dissimilarity measure between two data objec...
Satellite images time series have been used to study land surface, such as identification of forest,...
Adam T, Langrock R, Kneib T. Model-based Clustering of Time Series Data: a Flexible Approach using N...
International audienceSatellite images allow the acquisition of large-scale ground vegetation. Image...
International audienceNowadays, satellite images are widely exploited in many fields including agric...
Satellite images time series have been used to study land surface, such as identification of forest,...
International audienceNowadays, remote sensing technologies produce huge amounts of satellite images...
Financiado para publicación en acceso aberto: Universidade da Coruña/CISUG[Abstract] Clustering of m...