A new method for clustered survival data: estimation of treatment effect heterogeneity and variable selection
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Publication:6625363
DOI10.1002/bimj.202200178zbMATH Open1547.62274MaRDI QIDQ6625363
Publication date: 28 October 2024
Published in: Biometrical Journal (Search for Journal in Brave)
variable importanceBayesian machine learningtreatment effect heterogeneityclustered survival observations
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