In this paper, we study sparse group Lasso for high-dimensional double sparse linear regression, where the parameter of interest is simultaneously element-wise and group-wise sparse. This problem is an important instance of the simultaneously structured model -- an actively studied topic in statistics and machine learning. In the noiseless case, we provide matching upper and lower bounds on sample complexity for the exact recovery of sparse vectors and for stable estimation of approximately sparse vectors, respectively. In the noisy case, we develop upper and matching minimax lower bounds for estimation error. We also consider the debiased sparse group Lasso and investigate its asymptotic property for the purpose of statistical inference. F...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
37 pagesWe consider the problem of estimating a sparse linear regression vector $\beta^*$ under a ga...
In high dimensional sparse regression, pivotal estimators are estimators for which the optimal regul...
In the field of high-dimensional statistics, it is commonly assumed that only a small subset of the ...
We study a norm for structured sparsity which leads to sparse linear predictors whose supports are u...
We formulate the sparse classification problem of n samples with p features as a binary convex optim...
Recent work has focused on the problem of conducting linear regression when the number of covariates...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
Group-based sparsity models are proven instrumental in linear regression problems for recovering sig...
We develop a novel framework that adds the regularizers of the sparse group lasso to a family of ada...
We consider the least-square regression problem with regularization by a block 1-norm, i.e., a sum o...
A structured variable selection problem is considered in which the covariates, divided into predefin...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
37 pagesWe consider the problem of estimating a sparse linear regression vector $\beta^*$ under a ga...
In high dimensional sparse regression, pivotal estimators are estimators for which the optimal regul...
In the field of high-dimensional statistics, it is commonly assumed that only a small subset of the ...
We study a norm for structured sparsity which leads to sparse linear predictors whose supports are u...
We formulate the sparse classification problem of n samples with p features as a binary convex optim...
Recent work has focused on the problem of conducting linear regression when the number of covariates...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
Group-based sparsity models are proven instrumental in linear regression problems for recovering sig...
We develop a novel framework that adds the regularizers of the sparse group lasso to a family of ada...
We consider the least-square regression problem with regularization by a block 1-norm, i.e., a sum o...
A structured variable selection problem is considered in which the covariates, divided into predefin...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...