Functional data are becoming increasingly available and tractable because of the last technological advances. We enlarge the number of functional depths by defining two new depth functions for curves. Both depths are based on a spatial approach: the functional spatial depth (FSD), that shows an interesting connection with the functional extension of the notion of spatial quantiles, and the kernelized functional spatial depth (KFSD), which is useful for studying functional samples that require an analysis at a local level. Afterwards, we consider supervised functional classification problems, and in particular we focus on cases in which the samples may contain outlying curves. For these situations, some robust methods based on the us...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
We propose robust inference tools for functional data based on the notion of depth for curves. We ex...
Functional data are becoming increasingly available and tractable because of the last technological...
Functional data are becoming increasingly available and tractable because of the last technological...
Functional data are becoming increasingly available and tractable because of the last technological...
Functional data are becoming increasingly available and tractable because of the last technological...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
The depth function (functional) is a modern nonparametric statistical analysis tool for (finite-dime...
The depth function (functional) is a modern nonparametric statistical analysis tool for (finite-dime...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
We propose robust inference tools for functional data based on the notion of depth for curves. We ex...
Functional data are becoming increasingly available and tractable because of the last technological...
Functional data are becoming increasingly available and tractable because of the last technological...
Functional data are becoming increasingly available and tractable because of the last technological...
Functional data are becoming increasingly available and tractable because of the last technological...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
The depth function (functional) is a modern nonparametric statistical analysis tool for (finite-dime...
The depth function (functional) is a modern nonparametric statistical analysis tool for (finite-dime...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
We propose robust inference tools for functional data based on the notion of depth for curves. We ex...