NCAICLNEDec 2, 2025

The brain-AI convergence: Predictive and generative world models for general-purpose computation

arXiv:2512.02419v1h-index: 17
Originality Synthesis-oriented
AI Analysis

This theoretical perspective bridges neuroscience and AI to advance understanding of intelligence, but it is incremental as it builds on existing world-model concepts.

The paper identifies shared computational mechanisms in the brain and AI, where both use predictive world models for functions like sensory understanding and motor generation, enabling multi-domain capabilities and adaptive intelligence.

Recent advances in general-purpose AI systems with attention-based transformers offer a potential window into how the neocortex and cerebellum, despite their relatively uniform circuit architectures, give rise to diverse functions and, ultimately, to human intelligence. This Perspective provides a cross-domain comparison between the brain and AI that goes beyond the traditional focus on visual processing, adopting the emerging perspecive of world-model-based computation. Here, we identify shared computational mechanisms in the attention-based neocortex and the non-attentional cerebellum: both predict future world events from past inputs and construct internal world models through prediction-error learning. These predictive world models are repurposed for seemingly distinct functions -- understanding in sensory processing and generation in motor processing -- enabling the brain to achieve multi-domain capabilities and human-like adaptive intelligence. Notably, attention-based AI has independently converged on a similar learning paradigm and world-model-based computation. We conclude that these shared mechanisms in both biological and artificial systems constitute a core computational foundation for realizing diverse functions including high-level intelligence, despite their relatively uniform circuit structures. Our theoretical insights bridge neuroscience and AI, advancing our understanding of the computational essence of intelligence.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes