Empirical Processes and Statistical Reinforcement Learning
A Festschrift in Honor of Michael R. Kosorok
Chapman & Hall/CRC (Publisher)
1st Edition
Will be published approx. on 30. October 2026
Book
Hardback
384 pages
978-1-032-85663-6 (ISBN)
Description
Michael R. Kosorok has made significant contributions to biostatistics, precision medicine, machine learning and artificial intelligence, shaping the future of statistical methodology and biomedical research. Empirical Processes and Statistical Reinforcement Learning: A Festschrift in Honor of Michael R. Kosorok centres around his remarkable achievements.
The book encompasses topics such as empirical processes, semiparametric inference, causal inference, reinforcement learning, artificial intelligence, and precision medicine. With contributions from leading experts in the field, it highlights Michael R. Kosorok's pivotal role in advancing statistical methodology for cancer research and treatment regimes.
This Festschrift serves both as a reference for researchers and a resource for PhD-level education in biostatistics and biomedical research.
Key Features:
Informs the frontiers of methodological developments and their biomedical applications.
Explains empirical processes and semiparametric inference, including minimax optimality and target localization in distributed systems.
Provides in-depth insights into causal inference and reinforcement learning with topics like fair representation learning, synthetic control models, and causal reinforcement learning with unmeasured confounders.
Showcases advancements in precision medicine, including individualized treatment rules, outcome-weighted learning, and applications in sports analytics.
Includes contributions on statistical and machine learning methods for clinical decision-making and early detection.
The book encompasses topics such as empirical processes, semiparametric inference, causal inference, reinforcement learning, artificial intelligence, and precision medicine. With contributions from leading experts in the field, it highlights Michael R. Kosorok's pivotal role in advancing statistical methodology for cancer research and treatment regimes.
This Festschrift serves both as a reference for researchers and a resource for PhD-level education in biostatistics and biomedical research.
Key Features:
Informs the frontiers of methodological developments and their biomedical applications.
Explains empirical processes and semiparametric inference, including minimax optimality and target localization in distributed systems.
Provides in-depth insights into causal inference and reinforcement learning with topics like fair representation learning, synthetic control models, and causal reinforcement learning with unmeasured confounders.
Showcases advancements in precision medicine, including individualized treatment rules, outcome-weighted learning, and applications in sports analytics.
Includes contributions on statistical and machine learning methods for clinical decision-making and early detection.
More details
Language
English
Place of publication
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
College/higher education
Professional and scholarly
Postgraduate and Professional Reference
Illustrations
11 s/w Abbildungen, 57 farbige Abbildungen, 3 s/w Photographien bzw. Rasterbilder, 5 Farbfotos bzw. farbige Rasterbilder, 8 s/w Zeichnungen, 52 farbige Zeichnungen, 13 s/w Tabellen
13 Tables, black and white; 52 Line drawings, color; 8 Line drawings, black and white; 5 Halftones, color; 3 Halftones, black and white; 57 Illustrations, color; 11 Illustrations, black and white
Dimensions
Height: 254 mm
Width: 178 mm
Weight
453 gr
ISBN-13
978-1-032-85663-6 (9781032856636)
Copyright in bibliographic data is held by Nielsen Book Services Limited or its licensors: all rights reserved.
Schweitzer Classification
Persons
Shuangge (Steven) Ma is a Professor of Biostatistics at the Yale School of Public Health. He was a Ph.D. student of Prof. Kosorok at the University of Wisconsin and worked with him on semiparametric modeling, survival analysis, and empirical processes.
Eric B. Laber is the James B. Duke Distinguished Professor of Statistical Sciences and Biostatistics and Bioinformatics at Duke University. He is a fellow of the American Statistical Association and International Statistical Institute as well as the recipient of the Gottfried E. Noether Award, the Raymond J. Carroll Award, and the American Statistical Association Outstanding Application Award.
Eric B. Laber is the James B. Duke Distinguished Professor of Statistical Sciences and Biostatistics and Bioinformatics at Duke University. He is a fellow of the American Statistical Association and International Statistical Institute as well as the recipient of the Gottfried E. Noether Award, the Raymond J. Carroll Award, and the American Statistical Association Outstanding Application Award.
Editor
Yale University School of Public Health, U.S.A
North Carolina State University, Raleigh, USA
Content
About the Editors List of Contributors Empirical process and semiparametric inference A semi-parametric model for target localization in distributed systems Minimax Optimality of the Moderated MMD and Empirical Moderated MMD Based Two Sample Tests Causal inference, reinforcement learning, and artificial intelligence Statistical Inference in Reinforcement Learning: A Selective Survey Fair Sufficient Representation Learning Efficiently Learning Synthetic Control Models for High-dimensional Disaggregated Data A Selective Review on Causal Reinforcement Learning with Unmeasured Confounders Efficient learning using U-statistics with a valid instrumental variable Precision medicine Learning Individualized Treatment Rules with Optimal Treatment Grouping for Maximizing Mean Survival Time Statistical and Machine Learning in Individualized Clinical Decision Rules: Applications in Early Detection Introduction to Outcome Weighted Learning for Optimal Treatment Regimes Precision Medicine Meets Sports Analytics: Promise, Pitfalls, and Lessons from the Field Optimal treatment strategies for prioritized outcomes