基于概率Ant的分布式数据库聚类

R. Chandrasekar, V. Vijaykumar, T. Srinivasan
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引用次数: 9

摘要

本文提出了一种基于概率蚂蚁的分布式数据库聚类算法PACE。该算法基于众所周知的基于群的聚类方法。其特点是基于用户对分布式数据库的查询,在各种分布式站点中形成众多的区域。从查询中提取的关键字用于根据其在每个站点的相应出现概率或命中率分配一系列值。蚂蚁气味识别模型是蚁群构建和区域内集群形成的前一步。该算法的关键是对蚂蚁形成的堆树进行重新排序或排序,以使最可能的数据能够聚集在一起。实验结果显示了PACE与其他现有聚类算法的比较
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Probabilistic Ant based Clustering for Distributed Databases
In this paper we present PACE - a probabilistic ant based clustering algorithm for distributed databases. This algorithm is based on the well-known swarm based approach to clustering. Its characteristic feature is the formation of numerous zones in various distributed sites based on the user query to the distributed database. Keywords, extracted out of the query, are used to assign a range of values according to their corresponding probability of occurrence or hit ratio at each site. An ant odor identification model is used as a preceding step to the colony building and formation of clusters inside the zones. Reordering or sorting of the heap trees formed by the ants to enable agglomeration of only the most probable data forms the crux of this algorithm. Experimental results are reported showing the comparison of PACE with other existing clustering algorithms
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