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Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0001
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0002
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0003
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0004
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0005
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0006
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0007
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0008
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0009
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0010
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0011
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0012
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0013
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0014
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0015
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.003.0016
EISBN: 9780262374026
Series: Adaptive Computation and Machine Learning series
Publisher: The MIT Press
Published: 30 May 2023
DOI: 10.7551/mitpress/14207.001.0001
EISBN: 9780262374026
The first comprehensive guide to distributional reinforcement learning, providing a new mathematical formalism for thinking about decisions from a probabilistic perspective. Distributional reinforcement learning is a new mathematical formalism for thinking about decisions. Going beyond the common approach to reinforcement learning and expected values, it focuses on the total reward or return obtained as a consequence of an agent's choices—specifically, how this return behaves from a probabilistic perspective. In this first comprehensive guide to distributional reinforcement learning, Marc G. Bellemare, Will Dabney, and Mark Rowland, who spearheaded development of the field, present its key concepts and review some of its many applications. They demonstrate its power to account for many complex, interesting phenomena that arise from interactions with one's environment. The authors present core ideas from classical reinforcement learning to contextualize distributional topics and include mathematical proofs pertaining to major results discussed in the text. They guide the reader through a series of algorithmic and mathematical developments that, in turn, characterize, compute, estimate, and make decisions on the basis of the random return. Practitioners in disciplines as diverse as finance (risk management), computational neuroscience, computational psychiatry, psychology, macroeconomics, and robotics are already using distributional reinforcement learning, paving the way for its expanding applications in mathematical finance, engineering, and the life sciences. More than a mathematical approach, distributional reinforcement learning represents a new perspective on how intelligent agents make predictions and decisions.
Publisher: The MIT Press
Published: 24 August 2021
DOI: 10.7551/mitpress/12186.003.0001
EISBN: 9780262366212
Publisher: The MIT Press
Published: 24 August 2021
DOI: 10.7551/mitpress/12186.003.0002
EISBN: 9780262366212
Publisher: The MIT Press
Published: 24 August 2021
DOI: 10.7551/mitpress/12186.003.0003
EISBN: 9780262366212
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