动态数据库关联规则挖掘的免疫克隆算法

Hongwei Mo, Lifang Xu
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引用次数: 7

摘要

本文试图利用免疫克隆算法在动态事务数据库中生成大型项目集。挖掘关联规则时考虑了事务内部、事务间和分布式事务。分析了DMARICA(基于免疫克隆算法的关联规则动态挖掘)的复杂度时间,采用快速更新(FUP)算法处理事务内部,e-apriori算法处理事务之间。利用分布式DMARICA (DDMARICA)对分布式环境下的关联规则挖掘问题进行了探索。研究表明,DMARICA在执行时间和可扩展性方面优于FUP和e-apriori,而不包括生成的规则的质量或完整性。DMARICA还与DMARG(基于遗传算法的动态关联规则挖掘)进行了比较。它比DMARG具有更好的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Immune clone algorithm for mining association rules on dynamic databases
The paper seeks to generate large itemsets in a dynamic transaction database using immune clone algorithm. Intra transactions, inter transactions and distributed transactions are considered for mining association rules. The time of complexity of DMARICA (dynamic mining of association rules using immune clone algorithm) is analyzed, with fast updata (FUP) algorithm for intra transactions and e-apriori for inter transactions. The problem of mining association rules in the distributed environment is explored by distributed DMARICA (DDMARICA). The study shows that DMARICA outperforms both FUP and e-apriori in terms of execution time and scalability, without comprising the quality or completeness of rules generated. DMARICA is also compared with DMARG(dynamic mining of association rules using genetic algorithm). And it has better performance than that of DMARG
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