From internal models toward metacognitive AI
Mitsuo Kawato (ATR), Aurelio Cortese (ATR/RIKEN)

TL;DR
This paper proposes a computational neuroscience model of metacognition that explains how neural mechanisms enable animals to learn complex problems efficiently by monitoring and selecting internal models through a hierarchical reinforcement-learning architecture.
Contribution
It introduces a novel hierarchical reinforcement-learning model with a cognitive reality monitoring network that links metacognition to neural mechanisms of consciousness.
Findings
The model explains how responsibility signals guide model selection and learning.
It links metacognition to neural processes involving mismatch detection and reward prediction errors.
The entropy of responsibility signals is proposed as a measure of consciousness.
Abstract
In several papers published in Biological Cybernetics in the 1980s and 1990s, Kawato and colleagues proposed computational models explaining how internal models are acquired in the cerebellum. These models were later supported by neurophysiological experiments using monkeys and neuroimaging experiments involving humans. These early studies influenced neuroscience from basic, sensory-motor control to higher cognitive functions. One of the most perplexing enigmas related to internal models is to understand the neural mechanisms that enable animals to learn large-dimensional problems with so few trials. Consciousness and metacognition -- the ability to monitor one's own thoughts, may be part of the solution to this enigma. Based on literature reviews of the past 20 years, here we propose a computational neuroscience model of metacognition. The model comprises a modular hierarchical…
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Taxonomy
TopicsNeural dynamics and brain function · Neural and Behavioral Psychology Studies · Action Observation and Synchronization
