Journal article
Bayesian approximations and extensions: Optimal decisions for small brains and possibly big ones too
Abstract
We compared the performance of Bayesian learning strategies and approximations to such strategies, which are far less computationally demanding, in a setting requiring individuals to make binary decisions based on experience. Extending Bayesian updating schemes, we compared the different strategies while allowing for various implementations of memory and knowledge about the environment. The dynamics of the observable variables was modeled …
Authors
Lange A; Dukas R
Journal
Journal of Theoretical Biology, Vol. 259, No. 3, pp. 503–516
Publisher
Elsevier
Publication Date
August 2009
DOI
10.1016/j.jtbi.2009.03.020
ISSN
0022-5193