计算机科学 ›› 2026, Vol. 53 ›› Issue (5): 247-256.doi: 10.11896/jsjkx.250400093

• 人工智能 • 上一篇    下一篇

基于动态分布式有向图的记忆建模

危辉, 冯辰越   

  1. 复旦大学计算机科学技术学院 上海 200438
  • 收稿日期:2025-04-21 修回日期:2025-06-26 发布日期:2026-05-08
  • 通讯作者: 危辉(weihui@fudan.edu.cn)
  • 基金资助:
    国家自然科学基金(61771146)

Memory Modeling Based on Dynamic Distributed Directed Graph

WEI Hui, FENG Chenyue   

  1. School of Computer Science, Fudan University, Shanghai 200438, China
  • Received:2025-04-21 Revised:2025-06-26 Online:2026-05-08
  • About author:WEI Hui,born in 1971,Ph.D,professor,Ph.D supervisor.His main research interests include cognitive science and artificial intelligence.
  • Supported by:
    National Natural Science Foundation of China(61771146).

摘要: 记忆机制研究是计算神经科学中的核心课题。虽然已有研究揭示了神经元网络中的突触可塑性和信号传递等对记忆形成的重要性,但在计算模型中精准再现这些复杂的生物学机制依然面临巨大挑战。现有的传统图论模型能够描述神经网络的拓扑结构,但其静态特性和集中化的信息处理方式无法充分模拟生物神经网络的动态性、分布式和去中心化特征。因此,亟需提出更符合生物神经系统特征的基于动态有向图的记忆模型。该模型基于记忆印迹理论,采用稀疏连接的有向图网络结构,通过局部信息进行自主决策,实现去中心化的并行处理,创新性地引入了可变电阻结构,动态调整电阻值以模拟神经元突触的可塑性,并通过资源竞争的路径强化机制模仿生物神经网络的记忆过程。实验结果表明,该模型在不同规模和拓扑结构下均能稳定实现记忆功能,且记忆容量随网络宽度的增加呈近似线性增长,表现出与生物神经网络相似的特征。与现有主流模型相比,所提模型在资源利用效率、记忆容量及网络扩展性等方面具有显著优势,为类脑计算系统的设计与智能系统的研发提供了坚实的理论基础。

关键词: 记忆建模, 分布式算法, 有向图

Abstract: Memory mechanism research is a core topic in computational neuroscience.While existing studies have revealed the importance of synaptic plasticity,signal transmission,and other factors in memory formation within neural networks,accurately replicating these complex biological mechanisms in computational models remains a significant challenge.Traditional graph-theoretical models can describe the topological structure of neural networks,but their static nature and centralized information processing cannot fully capture the dynamic,distributed,and decentralized characteristics of biological neural networks.Therefore,there is an urgent need for a memory model based on dynamic directed graphs that better aligns with the features of biological neural systems.The model is based on memory trace theory and employs a sparsely connected directed graph network structure,allowing autonomous decision-making through local information to achieve decentralized parallel processing.The model innovatively introduces a variable resistance structure,dynamically adjusting resistance values to simulate synaptic plasticity in neurons.Additionally,a resource-competition-based path reinforcement mechanism is used to mimic the memory process in biological neural networks.Experimental results show that the model consistently achieves memory functionality across various network scales and topologies,and the memory capacity increases approximately linearly with network width,exhibiting characteristics like those of biological neural networks.Compared to existing mainstream models,the proposed model demonstrates significant advantages in resource efficiency,memory capacity,and network scalability,providing a solid theoretical foundation for the design of brain-like computing systems and the development of intelligent systems.

Key words: Memory modeling, Distributed algorithm, Directed graph

中图分类号: 

  • TP391
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