PyDTS: A Python Package for Discrete-Time Survival (Regularized) Regression with Competing Risks (original) (raw)

PyDTS: A Python Package for Discrete Time Survival Analysis with Competing Risks

Malka Gorfine

Zenodo (CERN European Organization for Nuclear Research), 2022

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Discrete-time Competing-Risks Regression with or without Penalization

Malka Gorfine

arXiv (Cornell University), 2023

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arXiv (Cornell University), 2022

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Journal of Statistical Planning and Inference, 2000

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Diego Vallarino

Diego Vallarino, 2023

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Jose Subirats

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Armand Maul

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Laleh Hassani

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Carmen Cadarso-suárez

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Sujit Ghosh

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Arvind Kumar Jain

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Arash Pakbin

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Jenna Wong

BMC Health Services Research, 2011

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Elia Mario Biganzoli

Computers in Biology and Medicine, 2007

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Ewout Steyerberg

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Arleen Auerbach

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