作者
Jan Drugowitsch, André G Mendonça, Zachary F Mainen, Alexandre Pouget
发表日期
2019/12/3
期刊
Proceedings of the National Academy of Sciences
卷号
116
期号
49
页码范围
24872-24880
出版商
National Academy of Sciences
简介
Diffusion decision models (DDMs) are immensely successful models for decision making under uncertainty and time pressure. In the context of perceptual decision making, these models typically start with two input units, organized in a neuron–antineuron pair. In contrast, in the brain, sensory inputs are encoded through the activity of large neuronal populations. Moreover, while DDMs are wired by hand, the nervous system must learn the weights of the network through trial and error. There is currently no normative theory of learning in DDMs and therefore no theory of how decision makers could learn to make optimal decisions in this context. Here, we derive such a rule for learning a near-optimal linear combination of DDM inputs based on trial-by-trial feedback. The rule is Bayesian in the sense that it learns not only the mean of the weights but also the uncertainty around this mean in the form of a covariance matrix …
引用总数
20192020202120222023202421012162016
学术搜索中的文章
J Drugowitsch, AG Mendonça, ZF Mainen, A Pouget - Proceedings of the National Academy of Sciences, 2019