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Reinforcement learning establishes a minimal metacognitive process to monitor and control motor learning performance

Taisei Sugiyama, Nicolas Schweighofer, Jun Izawa

2023Nature Communications22 citationsDOIOpen Access PDF

Abstract

Humans and animals develop learning-to-learn strategies throughout their lives to accelerate learning. One theory suggests that this is achieved by a metacognitive process of controlling and monitoring learning. Although such learning-to-learn is also observed in motor learning, the metacognitive aspect of learning regulation has not been considered in classical theories of motor learning. Here, we formulated a minimal mechanism of this process as reinforcement learning of motor learning properties, which regulates a policy for memory update in response to sensory prediction error while monitoring its performance. This theory was confirmed in human motor learning experiments, in which the subjective sense of learning-outcome association determined the direction of up- and down-regulation of both learning speed and memory retention. Thus, it provides a simple, unifying account for variations in learning speeds, where the reinforcement learning mechanism monitors and controls the motor learning process.

Topics & Concepts

Reinforcement learningMotor learningComputer scienceActive learning (machine learning)Process (computing)ReinforcementMetacognitionMotor skillControl (management)Mechanism (biology)Artificial intelligenceCognitive psychologyMachine learningPsychologyNeuroscienceCognitionSocial psychologyPhilosophyEpistemologyOperating systemMotor Control and AdaptationNeural dynamics and brain functionAction Observation and Synchronization
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