aorsf: An R package for supervised learning using the oblique random survival forest

aorsf: An R package for supervised learning using the oblique random survival forest - Published in JOSS (2022)

https://github.com/bcjaeger/aorsf

Science Score: 87.0%

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JOSS Publication

aorsf: An R package for supervised learning using the oblique random survival forest
Published
September 28, 2022
Volume 7, Issue 77, Page 4705
Authors
Byron C. Jaeger ORCID
Wake Forest University School of Medicine
Sawyer Welden
Wake Forest University School of Medicine
Kristin Lenoir
Wake Forest University School of Medicine
Nicholas M. Pajewski
Wake Forest University School of Medicine
Editor
Daniel S. Katz ORCID
Tags
machine learning supervised learning survival random forest