This paper presents a general notion of Mahalanobis distance for functional data that extends the classical multivariate concept to situations where the observed data are points belonging to curves generated by a stochastic process. More precisely, a new semi-distance for functional observations that generalize the usual Mahalanobis distance for multivariate datasets is introduced. For that, the development uses a regularized square root inverse operator in Hilbert spaces. Some of the main characteristics of the functional Mahalanobis semi-distance are shown. Afterwards, new versions of several well known functional classification procedures are developed using the Mahalanobis distance for functional data as a measure of proximity b...
AbstractA distance for mixed nominal, ordinal and continuous data is developed by applying the Kullb...
The problem of classification in multivariate analysis is considered. The distribution of the extrem...
I consider the problem of estimating the Mahalanobis distance between multivariate normal population...
This paper presents a general notion of Mahalanobis distance for functional data that extends the c...
<div><p>This article presents a new semidistance for functional observations that generalizes the Ma...
We present some asymptotic results on the distance between the means of samples of curves generated ...
In this work we propose a multivariate functional clustering technique based on a distance which gen...
In this work we propose a multivariate functional clustering technique based on a distance which ge...
It is well known that not all the inferential procedures adopted in the multivariate PCA can be trai...
.Functional data refer to data which consist of curves evaluated at a finite subset of some interval...
A popular approach for classifying functional data is based on the distances from the function or it...
The relationship between two sets of real variables defined for the same individuals can be evaluate...
In this paper we study the main properties of a distance introduced by C.M. Cuadras (1974). This dis...
Abstract. Within the framework of kernel methods, linear data methods have al-most completely been e...
© 2016, Springer-Verlag Berlin Heidelberg. We construct classifiers for multivariate and functional ...
AbstractA distance for mixed nominal, ordinal and continuous data is developed by applying the Kullb...
The problem of classification in multivariate analysis is considered. The distribution of the extrem...
I consider the problem of estimating the Mahalanobis distance between multivariate normal population...
This paper presents a general notion of Mahalanobis distance for functional data that extends the c...
<div><p>This article presents a new semidistance for functional observations that generalizes the Ma...
We present some asymptotic results on the distance between the means of samples of curves generated ...
In this work we propose a multivariate functional clustering technique based on a distance which gen...
In this work we propose a multivariate functional clustering technique based on a distance which ge...
It is well known that not all the inferential procedures adopted in the multivariate PCA can be trai...
.Functional data refer to data which consist of curves evaluated at a finite subset of some interval...
A popular approach for classifying functional data is based on the distances from the function or it...
The relationship between two sets of real variables defined for the same individuals can be evaluate...
In this paper we study the main properties of a distance introduced by C.M. Cuadras (1974). This dis...
Abstract. Within the framework of kernel methods, linear data methods have al-most completely been e...
© 2016, Springer-Verlag Berlin Heidelberg. We construct classifiers for multivariate and functional ...
AbstractA distance for mixed nominal, ordinal and continuous data is developed by applying the Kullb...
The problem of classification in multivariate analysis is considered. The distribution of the extrem...
I consider the problem of estimating the Mahalanobis distance between multivariate normal population...