基于改进粒子群算法的关联规则优化

Mayank Agrawal, Manuj Mishra, S. Kushwah
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引用次数: 7

摘要

本文采用改进的粒子群优化算法(PSO算法)对关联规则进行优化。这里的改进粒子群算法是指经典粒子群算法在遗传算法的变异形式下加上附加算子。粒子群算法的基本缺点是陷入局部最优。为了改进这一点,在经典粒子群算法中增加了变异算子。该算子在粒子群算法初始化阶段之后使用。首先利用标准Apriori算法生成不同的频繁项集生成关联规则,然后利用改进的粒子群算法对生成的关联规则进行优化。在UCI机器学习存储库的不同数据集上进行了实验,并将实验结果与其他先前提出的算法(称为KNN算法和ABC算法)进行了比较。实验结果表明,该算法的效率优于已有算法。
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Association rules optimization using improved PSO algorithm
In this work, association rules are optimized by using improved particle swarm optimization algorithm (PSO Algorithm). Here improved PSO algorithm means classical PSO algorithm with additional operator in the forms of mutation of genetic algorithm. The basic shortcoming of PSO algorithm is to get trapped into local optima. So for improving this, mutation operator is used additionally in classical PSO algorithm. This operator is used after the initialization phase of PSO algorithm. Firstly, different association rules for generating frequent item sets are generated by standard Apriori algorithm, then improved PSO algorithm is applied on these generated association rules for optimizing them. Experiments are performed on different datasets taken from UCI machine learning repository and results are compared with other previously proposed algorithms, called KNN algorithm and ABC algorithm. These results show that the proposed algorithms efficiency is better than previously proposed algorithms.
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