With the abundance of large data, sparse penalized regression techniques are commonly used in data analysis due to the advantage of simultaneous variable selection and estimation. A number of convex as well as nonconvex penalties have been proposed in the literature to achieve sparse estimates. Despite intense work in this area, how to perform valid inference for sparse penalized regression with a general penalty remains to be an active research problem. In this article, by making use of state-of-the-art optimization tools in stochastic variational inequality theory, we propose a unified framework to construct confidence intervals for sparse penalized regression with a wide range of penalties, including convex and nonconvex penalties. We st...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
Abstract. This paper studies oracle properties of `1-penalized estima-tors of a probability density....
With the abundance of large data, sparse penalized regression techniques are commonly used in data a...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
© 2015, The Author(s). We study the problem of statistical estimation with a signal known to be spar...
International audienceThis paper considers the penalized least squares estimators with convex penalt...
no issnWe perform inference for the sparse and potentially high-dimensional parametric part of a par...
Fan and Li propose a family of variable selection methods via penal-ized likelihood using concave pe...
... In this article, penalized likelihood approaches are proposed to handle these kinds of problems....
Sparse estimation methods are aimed at using or obtaining parsimo-nious representations of data or m...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
One popular method for fitting a regression function is regularization: minimize an objective functi...
This thesis considers estimation and statistical inference for high dimensional model with constrain...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
Abstract. This paper studies oracle properties of `1-penalized estima-tors of a probability density....
With the abundance of large data, sparse penalized regression techniques are commonly used in data a...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
© 2015, The Author(s). We study the problem of statistical estimation with a signal known to be spar...
International audienceThis paper considers the penalized least squares estimators with convex penalt...
no issnWe perform inference for the sparse and potentially high-dimensional parametric part of a par...
Fan and Li propose a family of variable selection methods via penal-ized likelihood using concave pe...
... In this article, penalized likelihood approaches are proposed to handle these kinds of problems....
Sparse estimation methods are aimed at using or obtaining parsimo-nious representations of data or m...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
One popular method for fitting a regression function is regularization: minimize an objective functi...
This thesis considers estimation and statistical inference for high dimensional model with constrain...
Recently, major attention has been given to penalized log-likelihood estimators for sparse precision...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
Abstract. This paper studies oracle properties of `1-penalized estima-tors of a probability density....