We apply the cyclic coordinate descent algorithm of Friedman et al. (2010) to the fitting of a conditional logistic regression model with lasso (`1) and elastic net penalties. The sequential strong rules of Tibshirani et al. (2012) are also used in the algorithm and it is shown that these offer a considerable speed up over the standard coordinate descent algorithm with warm starts. Once implemented, the algorithm is used in simulation studies to compare the variable selection and prediction performance of the conditional logistic regression model against that of its unconditional (standard) counterpart. We find that the conditional model performs admirably on datasets drawn from a suitable conditional distribution, outper-forming its uncond...
Pathwise coordinate descent algorithms have been used to compute entire solution paths for lasso and...
Fitting logistic regression models is challenging when their parameters are restricted. In this arti...
In this Master Thesis, we have analytically derived and numerically implemented three estimators of ...
We apply the cyclic coordinate descent algorithm of Friedman, Hastie, and Tibshirani (2010) to the ?...
International audienceThis paper considers the problem of estimation and variable selection for larg...
International audienceWe propose a model selection procedure in the context of matched case-control ...
The conditional logistic regression model is the standard tool for the analysis of epidemiological s...
We develop fast algorithms for estimation of generalized linear models with convex penalties. The mo...
International audienceThe conditional logistic regression model is the standard tool for the analysi...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
ABSTRACT. The problem of finding the maximum likelihood estimates for the re-gression coefficients i...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
We introduce a pathwise algorithm for the Cox proportional hazards model, regularized by convex comb...
faculty.chicagobooth.edu/matt.taddy This article describes a very fast algorithm for obtaining conti...
Pathwise coordinate descent algorithms have been used to compute entire solution paths for lasso and...
Fitting logistic regression models is challenging when their parameters are restricted. In this arti...
In this Master Thesis, we have analytically derived and numerically implemented three estimators of ...
We apply the cyclic coordinate descent algorithm of Friedman, Hastie, and Tibshirani (2010) to the ?...
International audienceThis paper considers the problem of estimation and variable selection for larg...
International audienceWe propose a model selection procedure in the context of matched case-control ...
The conditional logistic regression model is the standard tool for the analysis of epidemiological s...
We develop fast algorithms for estimation of generalized linear models with convex penalties. The mo...
International audienceThe conditional logistic regression model is the standard tool for the analysi...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
ABSTRACT. The problem of finding the maximum likelihood estimates for the re-gression coefficients i...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
We introduce a pathwise algorithm for the Cox proportional hazards model, regularized by convex comb...
faculty.chicagobooth.edu/matt.taddy This article describes a very fast algorithm for obtaining conti...
Pathwise coordinate descent algorithms have been used to compute entire solution paths for lasso and...
Fitting logistic regression models is challenging when their parameters are restricted. In this arti...
In this Master Thesis, we have analytically derived and numerically implemented three estimators of ...