On a Correspondence between Models in Binary Regression Analysis and in Survival Analysis
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Publication:3198732
DOI10.2307/1403807zbMath0713.62073OpenAlexW2122902964MaRDI QIDQ3198732
Publication date: 1990
Published in: International Statistical Review / Revue Internationale de Statistique (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.2307/1403807
survival analysisloglinear modelsproportional hazards modelsbinary regressionprobit modelslogistic modelslinear transformation modelsproportional odds modelsmodel developmentBerkson's logit modelbinary data analysiscontinuous time survival analysisgamma-logit modelsLehmann alternative modelsone-to-one correspondence between models
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