This paper proposes the External Hippocampus framework, which models language model reasoning from a cognitive dynamics perspective as the flow of information energy in semantic space. Unlike traditional weight-space optimization methods, this framework constructs topological cognitive maps through dimensionality reduction projection, enabling precise navigation and intervention of energy flow at test time while avoiding substantial computational requirements and demonstrating predictable intervention patterns. The method effectively addresses the cognitive deadlock problem in multi-step reasoning for small models. Experiments on models <=7B parameters show: map-guided methods achieve 81.20% accuracy on 500 challenging problems (relative baseline +16.80%), reduce reasoning time by >= 15x, with key findings revealing that reasoning stagnation manifests as "Cognitive Vortex" and low-entropy potential wells, while temperature perturbations effectively restart energy flow. The framework requires no additional training, possesses autonomous growth capability, and provides an efficient and controllable topological-aware solution for small model reasoning.
翻译:本文提出外部海马体框架,该框架从认知动力学视角将语言模型推理建模为语义空间中信息能量的流动。与传统权重空间优化方法不同,该框架通过降维投影构建拓扑认知地图,能够在测试时实现对能量流的精确导航与干预,同时避免大量计算需求,并展现出可预测的干预模式。该方法有效解决了小模型在多步推理中的认知僵局问题。在参数规模≤7B的模型上的实验表明:地图引导方法在500个挑战性问题上的准确率达到81.20%(相对基线提升+16.80%),推理时间减少≥15倍。关键发现揭示:推理停滞表现为“认知涡旋”与低熵势阱,而温度扰动能有效重启能量流动。该框架无需额外训练,具备自主生长能力,为小模型推理提供了高效可控的拓扑感知解决方案。