Bee foraging in uncertain environments using predictive hebbian learning.
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Computational psychiatryFluctuation-Driven Neural Dynamics Reproduce Drosophila Locomotor PatternsWriting memories with light-addressable reinforcement circuitry.A unified framework for addiction: vulnerabilities in the decision processThe effects of the previous outcome on probabilistic choice in rats.Representation of numerosity in posterior parietal cortex.Hierarchical models in the brain.Reinforcement learning or active inference?Computational and dynamic models in neuroimaging.An imperfect dopaminergic error signal can drive temporal-difference learning.Optimal habits can develop spontaneously through sensitivity to local costOptimality principles in sensorimotor control.Model-based influences on humans' choices and striatal prediction errors.Relative gains, losses, and reference points in probabilistic choice in rats.Visual anticipation biases conscious decision making but not bottom-up visual processing.Understanding dopamine and reinforcement learning: the dopamine reward prediction error hypothesis.Simple learning rules to cope with changing environmentsTamping Ramping: Algorithmic, Implementational, and Computational Explanations of Phasic Dopamine Signals in the AccumbensTowards a Neuronal Gauge Theory.Temporal sequence learning, prediction, and control: a review of different models and their relation to biological mechanisms.Choosing the greater of two goods: neural currencies for valuation and decision making.Acquired equivalence associative learning in GTC epileptic patients: experimental and computational studyThe adaptive nature of the human neurocognitive architecture: an alternative model.Predicting explorative motor learning using decision-making and motor noiseA computational model of craving and obsession.Mathematical properties of neuronal TD-rules and differential Hebbian learning: a comparisonNeuromodulation of reward-based learning and decision making in human agingComputational models of performance monitoring and cognitive control.The history of the future of the Bayesian brain.Efficient coding and the neural representation of value.Brain control and information transfer.An extended reinforcement learning model of basal ganglia to understand the contributions of serotonin and dopamine in risk-based decision making, reward prediction, and punishment learning.Short-term plasticity as cause-effect hypothesis testing in distal reward learning.Active inference and agency: optimal control without cost functions.Free energy, value, and attractors.Short-term gains, long-term pains: how cues about state aid learning in dynamic environments.Exploration and exploitation during sequential search.A computational role for dopamine delivery in human decision-making.Computational models of neuromodulation.Surprise signals in anterior cingulate cortex: neuronal encoding of unsigned reward prediction errors driving adjustment in behavior.
P2860
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P2860
Bee foraging in uncertain environments using predictive hebbian learning.
description
1995 nî lūn-bûn
@nan
1995 թուականի Հոկտեմբերին հրատարակուած գիտական յօդուած
@hyw
1995 թվականի հոտեմբերին հրատարակված գիտական հոդված
@hy
1995年の論文
@ja
1995年論文
@yue
1995年論文
@zh-hant
1995年論文
@zh-hk
1995年論文
@zh-mo
1995年論文
@zh-tw
1995年论文
@wuu
name
Bee foraging in uncertain environments using predictive hebbian learning.
@ast
Bee foraging in uncertain environments using predictive hebbian learning.
@en
Bee foraging in uncertain environments using predictive hebbian learning.
@nl
type
label
Bee foraging in uncertain environments using predictive hebbian learning.
@ast
Bee foraging in uncertain environments using predictive hebbian learning.
@en
Bee foraging in uncertain environments using predictive hebbian learning.
@nl
prefLabel
Bee foraging in uncertain environments using predictive hebbian learning.
@ast
Bee foraging in uncertain environments using predictive hebbian learning.
@en
Bee foraging in uncertain environments using predictive hebbian learning.
@nl
P356
P1433
P1476
Bee foraging in uncertain environments using predictive hebbian learning.
@en
P2093
P2888
P304
P356
10.1038/377725A0
P407
P577
1995-10-01T00:00:00Z
P5875
P6179
1015713591