Multi-Armed Bandits
Theory and Applications to Online Learning in Networks
Multi-armed bandit problems pertain to optimal sequential decision making and learning in unknown environments. Since the first bandit problem posed by Thompson in 1933 for the application of clinical trials, bandit problems have enjoyed lasting attention from multiple research communities and have found a wide range of applications across diverse domains. This book covers classic results and recent development on both Bayesian and frequentist bandit problems. We start in Chapter 1 with a brief overview on the history of bandit problems, contrasting the two schools¿Bayesian and frequentist¿of approaches and highlighting foundational results a…
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Produktdetails
- ISBN: 978-3-031-79288-5
- EAN: 9783031792885
- Produktnummer: 39040533
- Verlag: Springer International Publishing
- Sprache: Englisch
- Erscheinungsjahr: 2019
- Seitenangabe: 168 S.
- Masse: H23.5 cm x B19.1 cm x D0.9 cm 327 g
- Abbildungen: Paperback
- Gewicht: 327
Über den Autor
Qing Zhao is a Joseph C. Ford Professor of Engineering at Cornell University. Prior to that, she was a Professor in the ECE Department at University of California, Davis. She received a Ph.D. in Electrical Engineering from Cornell in 2001. Her research interests include sequential decision theory, stochastic optimization, machine learning, and algorithmic theory with applications in infrastructure, communications, and social-economic networks. She is a Fellow of IEEE, a Distinguished Lecturer of the IEEE Signal Processing Society, a Marie SkÅ,odowska-Curie Fellow of the European Union Research and Innovation program, and a Jubilee Chair Professor of Chalmers University during her 2018-2019 sabbatical leave. She received the 2010 IEEE Signal Processing Magazine Best Paper Award and the 2000 Young Author Best Paper Award from IEEE Signal Processing Society.
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