Upgrading survival models with CARE
28.11.2025 11:15 – 12:15
RESEARCH INSTITUTE FOR STATISTICS AND INFORMATION SCIENCE SEMINARS
ABSTRACT
Clinical risk prediction models are regularly updated as new data, often with additional covariates, become available. We propose CARE (Convex Aggregation of relative Risk Estimators) as a general approach for combining existing 'external' estimators with a new data set in a time-to-event survival analysis setting. Our method initially employs the new data to fit a flexible family of reproducing kernel estimators via penalised partial likelihood maximisation. The final relative risk estimator is then constructed as a convex combination of the kernel and external estimators, with the convex combination coefficients and regularisation parameters selected using cross-validation. We establish high-probability bounds for the L2-error of our proposed aggregated estimator, showing that it achieves a rate of convergence that is at least as good as both the optimal kernel estimator and the best external model. Empirical results from simulation studies align with the theoretical results, and we illustrate the improvements our methods provide for cardiovascular disease risk modelling. Our methodology is implemented in the Python package care-survival.
Lieu
Bâtiment: Uni Mail
Boulevard du Pont-d'Arve 40
1205 Geneva
Room M 5220, 5th floor
Organisé par
Université de GenèveFaculté d'économie et de management
Research Institute for Statistics and Information Science
Intervenant-e-s
William G. UNDERWOOD, Postdoctoral Researcher, Statistics Laboratory, Department of Pure Mathematics and Mathematical Statistics, University of Cambridge, UKentrée libre
Classement
Catégorie: Séminaire
Plus d'infos
Contact: missing email

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