For the problem of nonparametric regression of smooth functions, we reconsider and analyze a constrained variational approach, which we call the MultIscale Nemirovski-Dantzig (MIND) estimator. This can be viewed as a multiscale extension of the Dantzig selector (Ann. Statist. 35 (2009) 2313-2351) based on early ideas of Nemirovski (J. Comput. System Sci. 23 (1986) 111). MIND minimizes a homogeneous Sobolev norm under the constraint that the multiresolution norm of the residual is bounded by a universal threshold. The main contribution of this paper is the derivation of convergence rates of MIND with respect to L-q-loss, 1 <= q <= infinity, both almost surely and in expectation. To this end, we introduce the method of approximate source cond...
We consider a general nonparametric regression model called the compound model. It includes, as spec...
This paper makes several contributions to the literature on the important yet difficult problem of es...
This paper makes several contributions to the literature on the important yet difficult problem of es...
For the problem of nonparametric regression of smooth functions, we reconsider and analyze a constra...
In recent years, a novel type of multiscale variational statistical approaches, based on so-called m...
Many modern statistically efficient methods come with tremendous computational challenges, often lea...
Andresen and Spokoiny's (2013) "critical dimension in semiparametric estimation" provide a technique...
Andresen and Spokoiny's (2013) ``critical dimension in semiparametric estimation`` provide a techniq...
In the context of nonparametric regression and inverse problems, variational multiscale methods comb...
In this thesis we study adaptive methods of estimation for two particular types of statistical prob...
This work is concerned with the study of the adaptivity properties of nonparametric regression estim...
AbstractGiven any countable collection of regression procedures (e.g., kernel, spline, wavelet, loca...
This paper studies minimax rates of convergence for nonparametric location-scale models, which inclu...
In this paper we study the problem of estimating a function from n noiseless observations of functio...
International audienceWe consider the estimation of the slope function in functional linear regressi...
We consider a general nonparametric regression model called the compound model. It includes, as spec...
This paper makes several contributions to the literature on the important yet difficult problem of es...
This paper makes several contributions to the literature on the important yet difficult problem of es...
For the problem of nonparametric regression of smooth functions, we reconsider and analyze a constra...
In recent years, a novel type of multiscale variational statistical approaches, based on so-called m...
Many modern statistically efficient methods come with tremendous computational challenges, often lea...
Andresen and Spokoiny's (2013) "critical dimension in semiparametric estimation" provide a technique...
Andresen and Spokoiny's (2013) ``critical dimension in semiparametric estimation`` provide a techniq...
In the context of nonparametric regression and inverse problems, variational multiscale methods comb...
In this thesis we study adaptive methods of estimation for two particular types of statistical prob...
This work is concerned with the study of the adaptivity properties of nonparametric regression estim...
AbstractGiven any countable collection of regression procedures (e.g., kernel, spline, wavelet, loca...
This paper studies minimax rates of convergence for nonparametric location-scale models, which inclu...
In this paper we study the problem of estimating a function from n noiseless observations of functio...
International audienceWe consider the estimation of the slope function in functional linear regressi...
We consider a general nonparametric regression model called the compound model. It includes, as spec...
This paper makes several contributions to the literature on the important yet difficult problem of es...
This paper makes several contributions to the literature on the important yet difficult problem of es...