International audienceIn this paper a new nonparametric functional method is introduced for predicting a scalar random variable $Y$ from a functional random variable $X$. The resulting prediction has the form of a weighted average of the training data set, where the weights are determined by the conditional probability density of $X$ given $Y$, which is assumed to be Gaussian. In this way such a conditional probability density is incorporated as a key information into the estimator. Contrary to some previous approaches, no assumption about the dimensionality of $\mathbb{E}(X|Y=y)$ is required. The new proposal is computationally simple and easy to implement. Its performance is shown through its application to both simulated and real data
Nonparametric estimation is a novelty statistical method which relaxes the distribution assumption a...
International audienceThis paper proposes a new methodology to quantify the uncertainties associated...
A density function is generally not well defined in functional data context, but we can define a sur...
International audienceIn this paper a new nonparametric functional method is introduced for predicti...
International audienceA new nonparametric approach for statistical calibration with functional data ...
In this paper a new nonparametric functional regression method is introduced for predicting a scalar...
National audienceIn this paper a new nonparametric functional method is introduced for predicting a ...
Dans cette thèse, nous nous intéressons à l'estimation non paramétrique de la densité conditionnelle...
An increasing number of statistical problems arise in connection with functional calibration. In eac...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...
© 2012 Dr. Stephen Edward LaneAs the amount of data captured in experimental and observational situa...
The purpose of this note is to provide a brief account of available FORTRAN Routines for computing n...
Functional data analysis (FDA) experienced a burst of growth after Ramsay and Silverman published th...
The problem of nonparametric estimation of the conditional density of a response, given a vector of ...
El objetivo de esta tesis es obtener herramientas estadísticas para el análisis de datos infinito di...
Nonparametric estimation is a novelty statistical method which relaxes the distribution assumption a...
International audienceThis paper proposes a new methodology to quantify the uncertainties associated...
A density function is generally not well defined in functional data context, but we can define a sur...
International audienceIn this paper a new nonparametric functional method is introduced for predicti...
International audienceA new nonparametric approach for statistical calibration with functional data ...
In this paper a new nonparametric functional regression method is introduced for predicting a scalar...
National audienceIn this paper a new nonparametric functional method is introduced for predicting a ...
Dans cette thèse, nous nous intéressons à l'estimation non paramétrique de la densité conditionnelle...
An increasing number of statistical problems arise in connection with functional calibration. In eac...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...
© 2012 Dr. Stephen Edward LaneAs the amount of data captured in experimental and observational situa...
The purpose of this note is to provide a brief account of available FORTRAN Routines for computing n...
Functional data analysis (FDA) experienced a burst of growth after Ramsay and Silverman published th...
The problem of nonparametric estimation of the conditional density of a response, given a vector of ...
El objetivo de esta tesis es obtener herramientas estadísticas para el análisis de datos infinito di...
Nonparametric estimation is a novelty statistical method which relaxes the distribution assumption a...
International audienceThis paper proposes a new methodology to quantify the uncertainties associated...
A density function is generally not well defined in functional data context, but we can define a sur...