L 1 Penalized Estimation in the Cox Proportional Hazards Model
Leiden University Medical Center
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Abstract
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates of parameters in high-dimensional models. The lasso has the property that it simultaneously performs variable selection and shrinkage, which makes it very useful for finding interpretable prediction rules in high-dimensional data. The new algorithm is based on a combination of gradient ascent optimization with the Newton-Raphson algorithm. It is described for a general likelihood function and can be applied in generalized linear models and other models with an L(1) penalty. The algorithm is demonstrated in the Cox proportional hazards model, predicting survival of breast cancer patients using gene expression…
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Authors
1Topics & keywords
Topics
Keywords
- Lasso (programming language)
- Mathematics
- Proportional hazards model
- Algorithm
- Feature selection
- Model selection
- Penalty method
- Applied mathematics
UN Sustainable Development Goals
- Good health and well-being
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