This paper proposed a new method to study functional non-parametric regression data analysis with conditional expectation in the case that the covariates are functional and the Principal Component Analysis was utilized to de-correlate the multivariate response variables. It utilized the formula of the Nadaraya Watson estimator (K-Nearest Neighbour (KNN)) for prediction with different types of the semi-metrics, (which are based on Second Derivative and Functional Principal Component Analysis (FPCA)) for measureing the closeness between curves. Root Mean Square Errors is used for the implementation of this model which is then compared to the independent response method. R program is used for analysing data. Then, when the covariates a...
arXiv admin note: substantial text overlap with arXiv:1205.5578This paper studies the problem of non...
Gaussian process regression (GPR) has been shown to be a powerful and effective nonparametric method...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...
Nonparametric functional regression is of considerable importance due to its impact on the developme...
102Data Availability Statement: https://www.cpc.ncep.noaa.gov/data/indices/ (accessed on 9 January 2...
Nonparametric regression methods have been widely studied in functional regression analysis in the c...
En revision pour Scandinavian J. of Statistics.This work proposes a non-parametric estimator of the ...
The relation between a functional random covariate and a scalar answer due to left truncation by a d...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
Modern apparatuses allow us to collect samples of functional data, mainly curves but also images. On...
This paper is devoted to the R package fda.usc which includes some utilities for functional data ana...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
Advances in data collection and storage have tremendously increased the presence of functional data,...
AbstractWe consider a nonparametric regression model where the response Y and the covariate X are bo...
arXiv admin note: substantial text overlap with arXiv:1205.5578This paper studies the problem of non...
Gaussian process regression (GPR) has been shown to be a powerful and effective nonparametric method...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...
Nonparametric functional regression is of considerable importance due to its impact on the developme...
102Data Availability Statement: https://www.cpc.ncep.noaa.gov/data/indices/ (accessed on 9 January 2...
Nonparametric regression methods have been widely studied in functional regression analysis in the c...
En revision pour Scandinavian J. of Statistics.This work proposes a non-parametric estimator of the ...
The relation between a functional random covariate and a scalar answer due to left truncation by a d...
<p>Existing approaches for multivariate functional principal component analysis are restricted to da...
In functional principal component analysis (PCA), we treat the data that consist of functions not of...
Modern apparatuses allow us to collect samples of functional data, mainly curves but also images. On...
This paper is devoted to the R package fda.usc which includes some utilities for functional data ana...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
Advances in data collection and storage have tremendously increased the presence of functional data,...
AbstractWe consider a nonparametric regression model where the response Y and the covariate X are bo...
arXiv admin note: substantial text overlap with arXiv:1205.5578This paper studies the problem of non...
Gaussian process regression (GPR) has been shown to be a powerful and effective nonparametric method...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...