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- Title: Bayesian Models of Perception and Action: An Introduction
- Author(s) Wei Ji Ma, Konrad Paul Kording, Daniel Goldreich
- Publisher: The MIT Press (August 8, 2023); eBook (Creative Commons Licensed)
- License(s): Creative Commons License (CC)
- Paperback: 408 pages
- eBook: HTML
- Language: English
- ISBN-10: 0262047594
- ISBN-13: 978-0262047593
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An accessible introduction to constructing and interpreting Bayesian models of perceptual decision-making and action. This textbook provides an approachable introduction to constructing and reasoning with probabilistic models of perceptual decision-making and action.
About the Authors- Wei Ji Ma is Professor of Neural Science and Psychology at New York University, founder of the Growing up in Science series, and a founding member of the Scientist Action and Advocacy Network.
- Bayesian Thinking
- Statistics, Mathematical Statistics
- Probability and Stochastic Processes
- Digital Signal Processing (DSP), Sound and Imaging Processing
- Bayesian Models of Perception and Action: An Introduction (Wei Ji Ma, et al.)
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