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Research on a new clustering algorithm in data mining

机译:数据挖掘中一种新的聚类算法研究

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摘要

Data mining is one of the leading fields in the combination area of database and decision supporting, and clustering is a significant task for data mining, in which clustering algorithm is the core technology. The new clustering method based on genetic algorithm and gradient descent method (G-G clustering algorithm) is proposed in this paper. Genetic algorithm has the advantages of global searching and strong robustness, and will not getting stuck at local optimal values. Unfortunately, it can only reach the near-optimal value after many generations of selection, crossover and mutation. Therefore, gradient descent method is utilized at the end of genetic algorithm based clustering method to get global optimal values. Clustering results of two groups of experimental data show that the new clustering method is one with global optimal, and the results is evidently better than k-means clustering method.
机译:数据挖掘是数据库和决策支持相结合领域的领先领域之一,而聚类是数据挖掘的一项重要任务,其中聚类算法是核心技术。提出了一种基于遗传算法和梯度下降法的新聚类方法(G-G聚类算法)。遗传算法具有全局搜索和鲁棒性强的优点,不会陷入局部最优值。不幸的是,它只能在经过多代选择,交叉和突变后才能达到最佳值。因此,在基于遗传算法的聚类方法的最后,利用梯度下降法获得全局最优值。两组实验数据的聚类结果表明,新的聚类方法是全局最优的,其结果明显优于k-means聚类方法。

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