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Multi-swarm bat algorithm for association rule mining using multiple cooperative strategies

机译:使用多种合作策略的关联规则挖掘的多群蝙蝠算法

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Association Rule Mining (ARM) can be considered as a combinatorial problem with the purpose of extracting the correlations between items in sizeable datasets. The numerous polynomial exact algorithms already proposed for ARM are unadapted for large databases and especially for those existing on the web. Assuming that datasets are a large space search, intelligent algorithms was used to found high quality rules and solve ARM issue. This paper deals with a cooperative multi-swarm bat algorithm for association rule mining. It is based on the bat-inspired algorithm adapted to rule discovering problem (BAT-ARM). This latter suffers from absence of communication between bats in the population which lessen the exploration of search space. However, it has a powerful rule generation process which leads to perfect local search. Therefore, to maintain a good trade-off between diversification and intensification, in our proposed approach, we introduce cooperative strategies between the swarms that already proved their efficiency in multi-swarm optimization algorithm(Ring, Master-slave). Furthermore, we innovate a new topology called Hybrid that merges Ring strategy with Master-slave plan previously developed in our earlier work [23]. A series of experiments are carried out on nine well known datasets in ARM field and the performance of proposed approach are evaluated and compared with those of other recently published methods. The results show a clear superiority of our proposal against its similar approaches in terms of time and rule quality. The analysis also shows a competitive outcomes in terms of quality in-face-of multi-objective optimization methods.
机译:关联规则挖掘(ARM)可以被视为一个组合问题,目的是提取可观数据集中项目之间的相关性。已经为ARM提出的众多多项式精确算法不适用于大型数据库,特别是不适用于Web上存在的那些算法。假设数据集是一个大空间搜索,则使用智能算法来找到高质量规则并解决ARM问题。本文研究了一种用于关联规则挖掘的协同多群蝙蝠算法。它基于蝙蝠启发式算法,适用于规则发现问题(BAT-ARM)。后者由于种群中的蝙蝠之间缺乏交流而受到困扰,这减少了对搜索空间的探索。但是,它具有强大的规则生成过程,可导致完美的本地搜索。因此,为了在多样化和集约化之间保持良好的权衡,在我们提出的方法中,我们引入了群体之间的协作策略,这些策略已经在多群优化算法(Ring,Master-slave)中证明了其效率。此外,我们创新了一种称为混合的新拓扑,该拓扑将环形策略与先前在我们的早期工作中开发的主从计划合并[23]。在ARM领域的9个众所周知的数据集上进行了一系列实验,并对所提出方法的性能进行了评估,并将其与其他最近发布的方法进行了比较。结果显示,在时间和规则质量方面,我们的提案明显优于其类似方法。该分析还显示了在多目标优化方法质量方面的竞争结果。

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