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Modular agency approaches for CMC-aligned meta-cognitive AI

Combine modular and agency-based approaches to build meta-cognitive AI systems aligned with the Common Model of Cognition, enabling robust and interoperable Neuro-Symbolic architectures.

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Background

The review references the Common Model of Cognition and efforts to integrate cognitive architectures with foundation models. The authors explicitly call out as open combining modular and agency approaches to achieve CMC-aligned meta-cognitive systems.

References

Open research questions remain around how Neuro-Symbolic AI can integrate symbolic reasoning with meta-reinforcement learning for complex decision-making, fuse cognitive architectures with LLMs to develop meta-cognitive agents, leverage LLMs to enhance instance-based learning through meta-cognitive signals, create adaptive meta-cognitive frameworks for real-time conflict resolution, combine modular and agency approaches to build meta-cognitive AI systems aligned with the Common Model of Cognition, improve few-shot learning with cognitive architectures for meta-cognitive awareness, and develop Neuro-Symbolic generative networks that replicate human-like meta-cognitive processes.

Neuro-Symbolic AI in 2024: A Systematic Review (2501.05435 - Colelough et al., 9 Jan 2025) in Section 4.6 Meta-Cognition