High dimensional data with spatio-temporal structures are of great interest in many elds of research, but their exhibited complexity leads to practical issues when formulating statistical models. Functional data analysis through smoothing methods is a proper framework for incorporating space-time structures: extending the basic methodology to the multivariate spatio-temporal setting, we refer to Generalized Additive Models for estimating functional data taking the spatial and temporal dependences into account, and to Functional Principal Component Analysis as a classical dimension reduction technique to cope with the high dimensionality and with the number of estimated eects. Since spatial and temporal dependences integrate informa...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
High dimensional data with spatio-temporal structures are of great interest in many elds of researc...
The main aim of this paper is to perform Functional Principal Component Analysis (FPCA) taking into...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a num...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a numb...
Air pollution data sets are usually spatio-temporal multivariate data related to time series of diff...
Data with spatio-temporal structure can arise in many contexts, therefore a considerable interest in...
Data with spatio-temporal structure can arise in many contexts, therefore a considerable interest in...
Multivariate spatio-temporal data consist of a three way array with two dimensions’ domains both st...
Multivariate spatio-temporal data consist of a three way array with two dimensions\u2019 domains bot...
Data consisting in repeated observation on a series of fixed units are very common in different cont...
Data consisting in repeated observation on a series of fixed units are very common in different cont...
Space-time data are of great interest in many fields of research, but they are inherently complex in...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
High dimensional data with spatio-temporal structures are of great interest in many elds of researc...
The main aim of this paper is to perform Functional Principal Component Analysis (FPCA) taking into...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a num...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a numb...
Air pollution data sets are usually spatio-temporal multivariate data related to time series of diff...
Data with spatio-temporal structure can arise in many contexts, therefore a considerable interest in...
Data with spatio-temporal structure can arise in many contexts, therefore a considerable interest in...
Multivariate spatio-temporal data consist of a three way array with two dimensions’ domains both st...
Multivariate spatio-temporal data consist of a three way array with two dimensions\u2019 domains bot...
Data consisting in repeated observation on a series of fixed units are very common in different cont...
Data consisting in repeated observation on a series of fixed units are very common in different cont...
Space-time data are of great interest in many fields of research, but they are inherently complex in...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...
We consider spatio-temporal data and functional data with spatial dependence, characterized by compl...