Circuits that contain the Model Concept : Reinforcement Learning

(A neural network learning method where the network has amoung its inputs a (positive or negative) reward dependent on it's behavior as it explores a solution space.)
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1. A large-scale model of the functioning brain (spaun) (Eliasmith et al. 2012)
2. A reinforcement learning example (Sutton and Barto 1998)
3. A spiking neural network model of model-free reinforcement learning (Nakano et al 2015)
4. Alleviating catastrophic forgetting: context gating and synaptic stabilization (Masse et al 2018)
5. Alternative time representation in dopamine models (Rivest et al. 2009)
6. Basal Ganglia and Levodopa Pharmacodynamics model for parameter estimation in PD (Ursino et al 2020)
7. Coding explains development of binocular vision and its failure in Amblyopia (Eckmann et al 2020)
8. Cortex learning models (Weber at al. 2006, Weber and Triesch, 2006, Weber and Wermter 2006/7)
9. Cortical model with reinforcement learning drives realistic virtual arm (Dura-Bernal et al 2015)
10. Dynamic dopamine modulation in the basal ganglia: Learning in Parkinson (Frank et al 2004,2005)
11. First-Spike-Based Visual Categorization Using Reward-Modulated STDP (Mozafari et al. 2018)
12. Fixed point attractor (Hasselmo et al 1995)
13. Hippocampal context-dependent retrieval (Hasselmo and Eichenbaum 2005)
14. Motor system model with reinforcement learning drives virtual arm (Dura-Bernal et al 2017)
15. Odor supported place cell model and goal navigation in rodents (Kulvicius et al. 2008)
16. Prefrontal cortical mechanisms for goal-directed behavior (Hasselmo 2005)
17. Reinforcement learning of targeted movement (Chadderdon et al. 2012)
18. Reward modulated STDP (Legenstein et al. 2008)
19. Roles of subthalamic nucleus and DBS in reinforcement conflict-based decision making (Frank 2006)
20. Sensorimotor cortex reinforcement learning of 2-joint virtual arm reaching (Neymotin et al. 2013)
21. Striatal dopamine ramping: an explanation by reinforcement learning with decay (Morita & Kato, 2014)

Re-display model names with descriptions