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wrnet: Regularized win ratio regression through elastic net

WRNet is a machine-learning approach for regularized win ratio regression tailored to hierarchical composite endpoints. It optimizes feature selection and risk prediction through an elastic net-type penalty on regression coefficients (log-win ratios), making it suitable for high-dimensional data.

See https://lmaowisc.github.io/wrnet/.

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wrnet: Regularized win ratio regression through elastic net

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