抽象的

ACO prototype system optimization -based k means clustering algorithm research

Xin Wang, Zhi Xu,Wei Yuan


Cluster analysis is an importantmethod in image identification, information retrieval, data mining and spatial database research, from which K means algorithmis a kind of clustering algorithmbased on classificationmethod, the algorithm thought is providing K pieces of classification on N pieces of objects, and every classification of them represents a cluster, by comparing every cluster calculated mean and all patterns samples mean, it gets a most similar cluster, constantly repeat such process till objects in cluster all are similar and different clustersÂ’ objects are different, while objective function convergence lets square error function value to be the minimum one.ACO(Ant Colony Optimization)is a kind of simulating ant colony foraging behaviorsÂ’ bio-inspired optimization calculation, due to the algorithm reflects prominent applicability in complex optimization problemsÂ’ solution aspect, let it to get well applied in robot system, picture processing, manufacturing system, vehicle route system and communication system. Therefore, the paper analyzes K means clustering algorithm, it gets the algorithm shortcomings, and uses ACO prototype systemto optimize K means clustering algorithm, and states the algorithm feasibility and superiority.


免责声明: 此摘要通过人工智能工具翻译,尚未经过审核或验证

索引于

  • 中国社会科学院
  • 谷歌学术
  • 打开 J 门
  • 中国知网(CNKI)
  • 引用因子
  • 宇宙IF
  • 研究期刊索引目录 (DRJI)
  • 秘密搜索引擎实验室
  • ICMJE

查看更多

期刊国际标准号

期刊 h 指数

Flyer