about
The role of serotonin in the regulation of patience and impulsivityNitric oxide regulates input specificity of long-term depression and context dependence of cerebellar learningA kinetic model of dopamine- and calcium-dependent striatal synaptic plasticityCondition interference in rats performing a choice task with switched variable- and fixed-reward conditionsSerotonin differentially regulates short- and long-term prediction of rewards in the ventral and dorsal striatum.Humans can adopt optimal discounting strategy under real-time constraints.Parallel neural networks for learning sequential procedures.Complementary roles of basal ganglia and cerebellum in learning and motor control.What are the computations of the cerebellum, the basal ganglia and the cerebral cortex?The mechanism of saccade motor pattern generation investigated by a large-scale spiking neuron model of the superior colliculus.Metalearning and neuromodulation.Distinct neural representation in the dorsolateral, dorsomedial, and ventral parts of the striatum during fixed- and free-choice tasks.Emergence of polymorphic mating strategies in robot coloniesA unifying computational framework for motor control and social interactionA spiking neural network model of model-free reinforcement learning with high-dimensional sensory input and perceptual ambiguity.The computational neurobiology of learning and reward.Serotonin and the evaluation of future rewards: theory, experiments, and possible neural mechanisms.Multiple representations of belief states and action values in corticobasal ganglia loops.Understanding neural coding through the model-based analysis of decision making.Chaos may enhance information transmission in the inferior olive.Optogenetic activation of dorsal raphe serotonin neurons enhances patience for future rewards.Neural and personality correlates of individual differences related to the effects of acute tryptophan depletion on future reward evaluation.Inter-individual discount factor differences in reward prediction are topographically associated with caudate activation.Validation of decision-making models and analysis of decision variables in the rat basal ganglia.Reinforcement learning: Computational theory and biological mechanisms.Brain mechanism of reward prediction under predictable and unpredictable environmental dynamics.Prediction of immediate and future rewards differentially recruits cortico-basal ganglia loops.Parallel cortico-basal ganglia mechanisms for acquisition and execution of visuomotor sequences - a computational approach.Representation of action-specific reward values in the striatum.Serotonin affects association of aversive outcomes to past actions.Meta-learning in reinforcement learning.Expected energy-based restricted Boltzmann machine for classification.Inter-module credit assignment in modular reinforcement learning.Low-serotonin levels increase delayed reward discounting in humans.A hierarchical Bayesian method to resolve an inverse problem of MEG contaminated with eye movement artifacts.A neural correlate of reward-based behavioral learning in caudate nucleus: a functional magnetic resonance imaging study of a stochastic decision task.Neural substrate of dynamic Bayesian inference in the cerebral cortex.Three-dimensional distribution of Fos-positive neurons in the supramammillary nucleus of the rat exposed to novel environment.Current trends in decision making.Evidence for model-based action planning in a sequential finger movement task.
P50
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P50
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onderzoeker
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հետազոտող
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K Doya
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K Doya
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K Doya
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K Doya
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K Doya
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K Doya
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K Doya
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K Doya
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P106
P2456
P31
P496
0000-0002-2446-6820