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The rule Extraction of Numerical Association Rule Mining Using Hybrid Evolutionary Algorithm

机译:使用混合进化算法的数值关联规则挖掘的规则提取

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The topic of Particle Swarm Optimization (PSO) has recently gained popularity. Researchers has used it to solve difficulties related to job scheduling, evaluation of stock markets and association rule mining optimization. However, the PSO method often encounters the problem of getting trapped in the local optimum. Some researchers proposed a solution to over come that problem using combination of PSO and Cauchy distribution because this performance proved to reach the optimal rules. In this paper, we focus to adopt the combination for solving association rule mining (ARM) optimization problem in numerical dataset. Therefore, the aim of this research is to extract the rule of numerical ARM optimization problem for certain multi-objective functions such as support, confidence, and amplitude. This method is called PARCD. It means that PSO for numerical association rule mining problem with Cauchy Distribution. PARCD performed better results than other methods such as MOPAR, MODENAR, GAR, MOGAR and RPSOA.
机译:粒子群优化(PSO)的主题最近获得了普及。研究人员使用它来解决与工作调度相关,股票市场评估和协会挖掘优化有关的困难。然而,PSO方法经常遇到陷入本地最佳的问题。一些研究人员提出了一种解决方案,使用PSO和Cauchy分配的组合来解决这个问题,因为这种表现证明是达到最佳规则。在本文中,我们专注于在数值数据集中采用解决关联规则挖掘(ARM)优化问题的组合。因此,本研究的目的是为某些多目标功能提取数值臂优化问题的规则,例如支持,置信度和幅度。此方法称为Parcd。这意味着PSO有关Cauchy分布的数值关联规则挖掘问题。 Parcd表现出比其他方法(如Mopar,ModeNar,Gar,Mogar和RPSOA)的结果更好。

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