Divide and conquer for accelerated failure time model with massive time‐to‐event data
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Publication:6059453
DOI10.1002/cjs.11725MaRDI QIDQ6059453
Xingqiu Zhao, Guosheng Yin, Wen Su, Jing Zhang
Publication date: 2 November 2023
Published in: Canadian Journal of Statistics (Search for Journal in Brave)
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