A bio-inspired hierarchical clustering algorithm with backtracking strategy

作者:Akil Elkamel, Mariem Gzara, Hanêne Ben-Abdallah

摘要

Biological entities, such as birds with their flocking behavior, ants with their social colonies, fish with their shoaling behavior and honey bees with their complex nest construction, represent a great source of inspiration in the optimization and data mining domains. Following this line of thought, we propose the Communicating Ants for Clustering with Backtracking strategy (CACB) algorithm, which is based on a dynamic and an adaptive aggregation threshold and a backtracking strategy where artificial ants are allowed to turn back in their previous aggregation decisions. The CACB algorithm is a hierarchical clustering algorithm that generates compact dendrograms since it allows the aggregation of more than two clusters at a time. Its high performance is experimentally shown through several real benchmark data sets and a content-based image retrieval system.

论文关键词:Data mining, Clustering, Hierarchical clustering, ACO, Ant-based clustering, Bio-inspired algorithms, Artificial intelligence, CBIR, MPEG-7

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10489-014-0573-6