计算机科学 ›› 2026, Vol. 53 ›› Issue (4): 208-214.doi: 10.11896/jsjkx.250600216

• 数据库&大数据&数据科学 • 上一篇    下一篇

复杂网络下的概念认知学习与增量学习

秦海棋, 米据生   

  1. 河北师范大学数学科学学院 石家庄 050024
    河北省计算数学与应用重点实验室 石家庄 050024
  • 收稿日期:2025-06-28 修回日期:2025-09-15 出版日期:2026-04-15 发布日期:2026-04-08
  • 通讯作者: 米据生(mijsh@263.net)
  • 作者简介:(chinaqhq@163.com)
  • 基金资助:
    国家自然科学基金(62476078);河北省自然科学基金重点项目(F2023205006)

Concept-cognitive Learning and Incremental Learning in Complex Networks

QIN Haiqi, MI Jusheng   

  1. School of Mathematics Science, Hebei Normal University, Shijiazhuang 050024, China
    Hebei Key Laboratory of Computational Mathematics and Applications, Shijiazhuang 050024, China
  • Received:2025-06-28 Revised:2025-09-15 Published:2026-04-15 Online:2026-04-08
  • About author:QIN Haiqi,born in 2001,master.His main research interests include concept-cognitive learning,complex network and so on.
    MI Jusheng,born in 1966,Ph.D,professor,Ph.D supervisor.His main research interests include rough set,concept lattice,granular computing,approximate reasoning and so on.
  • Supported by:
    National Natural Science Foundation of China (62476078) and Key Project of Natural Science Foundation of Hebei Province,China(F2023205006).

摘要: 数据分析中,从网络中进行概念认知学习是网络背景下的机器学习或人工智能领域的重要问题。将认知算子应用于复杂网络,提出了网络认知概念,通过邻接矩阵和节点度来量化网络特征。进而讨论了动态权重网络的概念,分析了节点连接强度随时间变化的情况,并提出了动态权重网络认知概念的定义。此外,还给出了面向对象、属性和混合更新的增量计算机制,以应对网络节点的动态扩展、边属性的演化以及复合更新等场景。在动态权重网络中,提出了一种局部更新的方法,即通过滑动窗口机制和触发式更新两种方法高效处理边权值的变化,以减轻计算负担并提高效率。总体而言,通过引入认知算子和动态权重网络的概念,提供了一种分析和更新复杂网络中节点影响力的新方法。

关键词: 概念认知学习, 复杂网络, 增量学习, 粒计算, 动态网络

Abstract: In data analysis,concept-cognitive learning in networks is an important issue in the field of machine learning and artificial intelligence applied to network contexts.This paper applies the cognitive operator to complex networks,proposes the concept of network cognition,and quantifies network characteristics through the adjacency matrix and node degrees.This paper also discusses the concept of dynamic weighted networks,analyzes the situation where the connection strength of nodes changes over time,and proposes the definition of dynamic weighted network cognition.In addition,this paper proposes an incremental computation mechanism for object-oriented,attribute-oriented,and hybrid updates to cope with scenarios such as dynamic expansion of network nodes,evolution of edge attributes,and composite updates.In dynamic weighted networks,the paper proposes a method for local updates,which efficiently handles changes of edge weights through a sliding window mechanism and a trigger-based update method,reducing the computational burden and improving efficiency.Overall,by introducing the concepts of cognitive operators and dynamic weighted networks,this paper provides a new method for analyzing and updating the influence of nodes in complex networks.

Key words: Concept-cognitive learning, Complex network, Incremental learning, Granular computing, Dynamic network

中图分类号: 

  • TP181
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