When dealing with very large datasets of functional data, survey sampling ap-proaches are useful in order to obtain estimators of simple functional quantities, without being obliged to store all the data. We propose here a Horvitz–Thompson estimator of the mean trajectory. In the context of a superpopulation framework, we prove under mild regularity conditions that we obtain uniformly consistent estimators of the mean function and of its variance function. With additional assumptions on the sampling design we state a functional Central Limit Theorem and deduce asymptotic confidence bands. Stratified sampling is studied in detail, and we also obtain a functional version of the usual optimal allocation rule considering a mean variance criteri...
When sampling from a finite population there is often auxiliary information available on unit level....
The main objetive of this work is to extend the Horvitz-Thompson estimator to random fields
Chromy (1979) proposed a unequal probability sampling algorithm, which enables to select a sample in...
When collections of functional data are too large to be exhaustively observed, survey sampling techn...
Revised version for the Electronic Journal of StatisticsInternational audienceWhen the study variabl...
Lorsque des bases de données fonctionnelles sont trop grandes pour être observées de manière exhaust...
En révision pour Scandinavian J. of StatisticsFor fixed size sampling designs with high entropy it i...
In this thesis, we are interested in estimating the mean electricity consumption curve. Since the st...
Abstract: This paper addresses the survey estimation of a population mean in continuous time. For th...
We investigate the degree to which the Horvitz-Thompson estimator approximates the population mean i...
For a joint model-based and design-based inference, we establish functional central limit theorems f...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
Sampling distinct units from a population with unequal probabilities without replacement is a proble...
Two-stage sampling designs are commonly used for household and health surveys. To produce reliable e...
Unequal probability sampling without replacement is commonly used for sample selection. To produce e...
When sampling from a finite population there is often auxiliary information available on unit level....
The main objetive of this work is to extend the Horvitz-Thompson estimator to random fields
Chromy (1979) proposed a unequal probability sampling algorithm, which enables to select a sample in...
When collections of functional data are too large to be exhaustively observed, survey sampling techn...
Revised version for the Electronic Journal of StatisticsInternational audienceWhen the study variabl...
Lorsque des bases de données fonctionnelles sont trop grandes pour être observées de manière exhaust...
En révision pour Scandinavian J. of StatisticsFor fixed size sampling designs with high entropy it i...
In this thesis, we are interested in estimating the mean electricity consumption curve. Since the st...
Abstract: This paper addresses the survey estimation of a population mean in continuous time. For th...
We investigate the degree to which the Horvitz-Thompson estimator approximates the population mean i...
For a joint model-based and design-based inference, we establish functional central limit theorems f...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
Sampling distinct units from a population with unequal probabilities without replacement is a proble...
Two-stage sampling designs are commonly used for household and health surveys. To produce reliable e...
Unequal probability sampling without replacement is commonly used for sample selection. To produce e...
When sampling from a finite population there is often auxiliary information available on unit level....
The main objetive of this work is to extend the Horvitz-Thompson estimator to random fields
Chromy (1979) proposed a unequal probability sampling algorithm, which enables to select a sample in...