Three-factor learning
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In neuroscience and machine learning, three-factor learning is the combination of Hebbian plasticity with a third modulatory factor to stabilise and enhance synaptic learning.[1] This third factor can represent various signals such as reward, punishment, error, surprise, or novelty, often implemented through neuromodulators.[2]