AI Mental Models: Learned Intuition and Deliberation in a Bounded Neural Architecture
arXiv cs.AI / 2026/3/25
💬 オピニオンIdeas & Deep AnalysisModels & Research
要点
- The paper tests whether a bounded neural architecture can split “intuition” and “deliberation” in a 64-item syllogistic reasoning benchmark tied to debates on world models and multi-stage reasoning.
- Experiments compare a direct neural baseline against a bounded dual-path model with separate intuition and deliberation pathways, finding that bounded deliberation significantly outperforms bounded intuition (aggregate correlations r = 0.8152 vs r = 0.7272; p = 0.0101).
- The biggest held-out gains for the deliberation pathway appear in categories like NVC, Eca, and Oca, indicating improved handling of rejection-related responses and c–a conclusions.
- Interpretability and stability analyses (80:20 run and five-seed sweep) suggest the deliberation pathway forms sparse, differentiated internal states, including an Oac-leaning state and a dominant “workhorse” state, though state indices vary across runs.
- The authors interpret results as evidence for reasoning-like internal organization under bounded constraints, while explicitly not claiming the model performs the full sequential process of building models, searching counterexamples, and revising conclusions.
