In the context of adaptive nonparametric curve estimation a common assumption is that a function (signal) to estimate belongs to a nested family of functional classes. These classes are often parametrized by a quantity representing the smoothness of the signal. It has already been realized by many that the problem of estimating the smoothness is not sensible. What can then be inferred about the smoothness? The paper attempts to answer this question. We consider implications of our results to hypothesis testing about the smoothness and smoothness classification problem. The test statistic is based on the empirical Bayes approach, i.e., it is the marginalized maximum likelihood estimator of the smoothness parameter for an appropriate prior di...
In nonparametric estimation of functionals of a distribution, it may or may not be desirable, or ind...
A Bayesian hierarchical model is developed for smoothing functional data. Functional data, with basi...
We propose a methodology for informative goodness of fit testing that combines the merits of both hy...
In the context of adaptive nonparametric curve estimation a common assumption is that a function (si...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
In the context of adaptive nonparametric curve estimation problem, a common as-sumption is that a fu...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
We describe procedures for Bayesian estimation and testing in cross-sectional, panel data and nonlin...
We study the asymptotic behaviour of a Bayesian nonparametric test of qualitative hypotheses. More p...
We study the asymptotic behavior of a Bayesian nonparametric test of qualitative hypotheses. More pr...
In this thesis, we are concerned with data in the form of curves. We study how to estimate the mean ...
Many quantities of interest in modern statistical analysis are non-smooth functionals of the underly...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
Smooth tests of goodness of fit assess the fit of data to a given probability density function withi...
The data driven method of selecting the number of components in Neyman's smooth test for uniformity,...
In nonparametric estimation of functionals of a distribution, it may or may not be desirable, or ind...
A Bayesian hierarchical model is developed for smoothing functional data. Functional data, with basi...
We propose a methodology for informative goodness of fit testing that combines the merits of both hy...
In the context of adaptive nonparametric curve estimation a common assumption is that a function (si...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
In the context of adaptive nonparametric curve estimation problem, a common as-sumption is that a fu...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
We describe procedures for Bayesian estimation and testing in cross-sectional, panel data and nonlin...
We study the asymptotic behaviour of a Bayesian nonparametric test of qualitative hypotheses. More p...
We study the asymptotic behavior of a Bayesian nonparametric test of qualitative hypotheses. More pr...
In this thesis, we are concerned with data in the form of curves. We study how to estimate the mean ...
Many quantities of interest in modern statistical analysis are non-smooth functionals of the underly...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
Smooth tests of goodness of fit assess the fit of data to a given probability density function withi...
The data driven method of selecting the number of components in Neyman's smooth test for uniformity,...
In nonparametric estimation of functionals of a distribution, it may or may not be desirable, or ind...
A Bayesian hierarchical model is developed for smoothing functional data. Functional data, with basi...
We propose a methodology for informative goodness of fit testing that combines the merits of both hy...