Regularization technique has become a principled tool for statistics and machine learning research and practice. However, in most situations, these regularization terms are not well interpreted, especially on how they are related to the loss function and data. In this paper, we propose a robust minimax framework to interpret the relationship between data and regularization terms for a large class of loss functions. We show that various regularization terms are essentially corresponding to different distortions to the original data matrix. This minimax framework includes ridge regression, lasso, elastic net, fused lasso, group lasso, local coordinate coding, multiple kernel learning, etc., as special cases. Within this minimax framework, we ...
Sparse-Group Lasso (SGL) has been shown to be a powerful regression technique for si-multaneously di...
Editor: the editor This paper proposes a new robust regression interpretation of sparse penalties su...
In this paper, we study the problem of recovering a group sparse vector from a small number of linea...
Regularization technique has become a principled tool for statistics and machine learning research a...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
Regularization techniques have become a principled tool for model-based statistics and artificial in...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
l2,1-norm is an effective regularization to enforce a simple group sparsity for feature learning. To...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
Following advances in compressed sensing and high-dimensional statistics, many pattern recognition m...
In this paper, we address the challenging task of simultaneously optimizing (i) the weights of a neu...
We consider the least-square regression problem with regularization by a block!1-norm, that is, a su...
AbstractIn compressed sensing, in order to recover a sparse or nearly sparse vector from possibly no...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Sparse-Group Lasso (SGL) has been shown to be a powerful regression technique for si-multaneously di...
Editor: the editor This paper proposes a new robust regression interpretation of sparse penalties su...
In this paper, we study the problem of recovering a group sparse vector from a small number of linea...
Regularization technique has become a principled tool for statistics and machine learning research a...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
Regularization techniques have become a principled tool for model-based statistics and artificial in...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
l2,1-norm is an effective regularization to enforce a simple group sparsity for feature learning. To...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
Following advances in compressed sensing and high-dimensional statistics, many pattern recognition m...
In this paper, we address the challenging task of simultaneously optimizing (i) the weights of a neu...
We consider the least-square regression problem with regularization by a block!1-norm, that is, a su...
AbstractIn compressed sensing, in order to recover a sparse or nearly sparse vector from possibly no...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Sparse-Group Lasso (SGL) has been shown to be a powerful regression technique for si-multaneously di...
Editor: the editor This paper proposes a new robust regression interpretation of sparse penalties su...
In this paper, we study the problem of recovering a group sparse vector from a small number of linea...