We show that the homotopy algorithm of Osborne, Presnell, and Turlach (2000), which has proved such an effective optimal path following method for implementing Tibshirani's "lasso" for variable selection in least squares estimation problems, can be extended to polyhedral objectives in examples such as the quantile regression lasso. The new algorithm introduces the novel feature that it requires two homotopy sequences involving continuation steps with respect to both the constraint bound and the Lagrange multiplier to be performed consecutively. Performance is illustrated by application to several standard datasets, and these results are compared to calculations made with the original lasso homotopy program. This permits an assessment of the...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We propose an adaptively weighted group Lasso procedure for simultaneous variable selection and stru...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by imp...
The title Lasso has been suggested by Tibshirani [7] as a colourful name for a technique of variabl...
Constrained least squares regression is an essential tool for high-dimensional data analysis. Given ...
It has been shown that the problem of `1-penalized least-square regression com-monly referred to as ...
International audienceWe revisit the positive cone condition given by Efron et al. [1] for the over-...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...
We consider the least angle regression and forward stagewise algorithms for solving penalized least ...
We consider the least angle regression and forward stagewise algorithms for solving penalized least...
In optimization, it is known that when the objective functions are strictly convex and well-conditio...
Abstract—Recovery of sparse signals from noisy observations is a problem that arises in many informa...
In situations when we know which inputs are relevant, the least squares method is often the best way...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We propose an adaptively weighted group Lasso procedure for simultaneous variable selection and stru...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by imp...
The title Lasso has been suggested by Tibshirani [7] as a colourful name for a technique of variabl...
Constrained least squares regression is an essential tool for high-dimensional data analysis. Given ...
It has been shown that the problem of `1-penalized least-square regression com-monly referred to as ...
International audienceWe revisit the positive cone condition given by Efron et al. [1] for the over-...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...
We consider the least angle regression and forward stagewise algorithms for solving penalized least ...
We consider the least angle regression and forward stagewise algorithms for solving penalized least...
In optimization, it is known that when the objective functions are strictly convex and well-conditio...
Abstract—Recovery of sparse signals from noisy observations is a problem that arises in many informa...
In situations when we know which inputs are relevant, the least squares method is often the best way...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We propose an adaptively weighted group Lasso procedure for simultaneous variable selection and stru...