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Neuro-Symbolic generative networks with human-like meta-cognitive processes

Develop Neuro-Symbolic generative networks that replicate human-like meta-cognitive processes, enabling introspective monitoring and adaptive adjustment during content generation.

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Background

The authors review proposals to bridge generative networks with cognitive models but note the lack of realized meta-cognitive neuro-symbolic generators. They explicitly list developing neuro-symbolic generative networks with human-like meta-cognition as an open research question.

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