An Adaption of the Jaynes Decision Algorithm
Abstract
:- (1)
- Enumerate the possible states of nature θj, discrete or continuous, as the case might be.
- (2)
- Assign prior probabilities (θj | X) which maximize the entropy subject to whatever prior information X you have.
- (3)
- Digest any additional evidence E by application of Bayes' theorem, thus obtaining the posterior probabilities (θj | EX).
- (4)
- Enumerate the possible decisions Di.
- (5)
- Specify the loss function L(Di, θj) that tells what you want to accomplish.
- (6)
- Make that decision Di which minimizes the expected loss:
References and Notes
- Jaynes, E.T. Probability Theory with Applications in Science and Engineering, chapter 13. “Introduction to Decision Theory”.
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Tarko, V. An Adaption of the Jaynes Decision Algorithm. Entropy 2007, 9, 27-29. https://doi.org/10.3390/e9010027
Tarko V. An Adaption of the Jaynes Decision Algorithm. Entropy. 2007; 9(1):27-29. https://doi.org/10.3390/e9010027
Chicago/Turabian StyleTarko, Vlad. 2007. "An Adaption of the Jaynes Decision Algorithm" Entropy 9, no. 1: 27-29. https://doi.org/10.3390/e9010027
APA StyleTarko, V. (2007). An Adaption of the Jaynes Decision Algorithm. Entropy, 9(1), 27-29. https://doi.org/10.3390/e9010027