We consider the problem of learning a sparse multi-task regression, where the structure in the outputs can be represented as a tree with leaf nodes as outputs and internal nodes as clusters of the outputs at multiple granularity. Our goal is to recover the common set of relevant inputs for each output cluster. Assuming that the tree structure is available as prior knowledge, we formulate this problem as a new multi-task regularized regression called tree-guided group lasso. Our structured regularization is based on a grouplasso penalty, where groups are defined with respect to the tree structure. We describe a systematic weighting scheme for the groups in the penalty such that each output variable is penalized in a balanced manner even if t...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Binary logistic regression with a sparsity constraint on the solution plays a vital role in many hig...
We consider the problem of learning a sparse multi-task regression, where the structure in the outpu...
We consider the problem of estimating a sparse multi-response regression function, with an applicati...
We develop a highly scalable optimization method called "hierarchical group-thresholding" for solvin...
Multi-task learning seeks to improve the generalization performance by sharing common information am...
We consider the problem of learning a structured multi-task regression, where the output consists of...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
National audienceMotivated by diagnostic applications in the field of clinical microbiology, we intr...
Structured sparsity has recently emerged in statistics, machine learning and signal process-ing as a...
We present a flexible formulation for variable selection in multi-task regression to allow for discr...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
Regularization technique has become a principled tool for statistics and machine learning research a...
In many high-dimensional learning problems, only some parts of an observation are important to the p...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Binary logistic regression with a sparsity constraint on the solution plays a vital role in many hig...
We consider the problem of learning a sparse multi-task regression, where the structure in the outpu...
We consider the problem of estimating a sparse multi-response regression function, with an applicati...
We develop a highly scalable optimization method called "hierarchical group-thresholding" for solvin...
Multi-task learning seeks to improve the generalization performance by sharing common information am...
We consider the problem of learning a structured multi-task regression, where the output consists of...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
National audienceMotivated by diagnostic applications in the field of clinical microbiology, we intr...
Structured sparsity has recently emerged in statistics, machine learning and signal process-ing as a...
We present a flexible formulation for variable selection in multi-task regression to allow for discr...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
Regularization technique has become a principled tool for statistics and machine learning research a...
In many high-dimensional learning problems, only some parts of an observation are important to the p...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
In this paper, we propose an algorithm encouraging group sparsity under some convex constraint. It s...
Binary logistic regression with a sparsity constraint on the solution plays a vital role in many hig...