1st Edition

Machine Learning for Survival Analysis

By Andreas Bender, Raphael Sonabend Copyright 2027
280 Pages 52 Color & 14 B/W Illustrations
by Chapman & Hall

Survival analysis is a mature field with decades of methodological development, yet machine learning survival analysis is still taking shape as a discipline in its own right. While machine learning methods for time-to-event prediction are increasingly used in health care, clinical research, actuarial science, engineering, and industry, a critical gap remains in the literature: few texts bridge... Read more

1. Introduction
2. Machine Learning
3. Survival Analysis
4. Event History Analysis
5. Survival Task
6. Discrimination
7. Calibration
8. Scoring Rules
9. Distance Measures
10. Choosing Measures
11. Core Estimators, Models, and Methods
12. Random Forests
13. Support Vector Machines
14. Gradient Boosting Machines
15. Neural Networks
16. Choosing Models
17. Reductions for Survival Analysis
18. IPCW Classification
19. Pseudo-Value Regression
20. Partition-Based Reductions
21. Reductions for Event History Analysis

Biography

Dr. Andreas Bender is a Senior Lecturer at the Department of Statistics, Head of the Machine Learning Consulting Unit (MLCU) at the Munich Center for Machine Learning (MCML), and founder of the Open Science Initiative in Statistics at LMU Munich. Machine Learning Survival Analysis is one of Andreas' main research areas. Andreas created several open-source packages and actively contributes to survival analysis software, including pammtools and mlr3proba.

Dr. Raphael Sonabend-Friend is an Associate Director at the National Institute for Health and Care Excellence (NICE) and the CEO and Co-Founder of OSPO Now. Raphael holds a PhD focused on the accessible and transparent use of machine learning for survival analysis. Raphael has over a decade of experience at the intersection of AI and healthcare, including work with large philanthropies, small local charities, governmental bodies, and private sector organizations in the United Kingdom and globally. Raphael has created and maintained several software packages for survival analysis and machine learning, including mlr3proba, survivalmodels, and SurvivalAnalysis.jl. Raphael co-edited and co-authored Applied Machine Learning Using mlr3 in R.