Model-based adaptive control of eddy current retarder

Author(s):  
Jun Yang ◽  
Fengyan Yi ◽  
Jinbo Wang
2009 ◽  
Author(s):  
Harold A. Sabbagh ◽  
John C. Aldrin ◽  
R. Kim Murphy ◽  
Elias H. Sabbagh ◽  
Donald O. Thompson ◽  
...  

2021 ◽  
Author(s):  
Ning Mao ◽  
Desheng Li ◽  
Jinshan Tian ◽  
Zhiwei Gao ◽  
Weixin Chen

2020 ◽  
Author(s):  
Dongjae Kim ◽  
Jaeseung Jeong ◽  
Sang Wan Lee

AbstractThe goal of learning is to maximize future rewards by minimizing prediction errors. Evidence have shown that the brain achieves this by combining model-based and model-free learning. However, the prediction error minimization is challenged by a bias-variance tradeoff, which imposes constraints on each strategy’s performance. We provide new theoretical insight into how this tradeoff can be resolved through the adaptive control of model-based and model-free learning. The theory predicts the baseline correction for prediction error reduces the lower bound of the bias–variance error by factoring out irreducible noise. Using a Markov decision task with context changes, we showed behavioral evidence of adaptive control. Model-based behavioral analyses show that the prediction error baseline signals context changes to improve adaptability. Critically, the neural results support this view, demonstrating multiplexed representations of prediction error baseline within the ventrolateral and ventromedial prefrontal cortex, key brain regions known to guide model-based and model-free learning.One sentence summaryA theoretical, behavioral, computational, and neural account of how the brain resolves the bias-variance tradeoff during reinforcement learning is described.


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