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Improved particle swarm optimization and K-means clustering algorithm for news article

机译:改进的粒子群优化算法和K-means聚类算法

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Fuzzy optimization based Data clustering is one of the important data mining tool, which is dynamic research of real world problems. K-Means algorithm is the most popular clustering method, because it is very easy to implement and fast working in the most of the situation. However this K-means algorithm is sensitive to initialization and easily trapped in local optima. Particle swarm optimization (PSO) is one of the global optimization techniques to solve most of the optimized problem. In this present trend, there has been an increasing interest in the application of the fuzzy model which gives the promising and efficient results if the data sets are too complex to analyze or available information is inexact or indecisive. This paper proposed an improved PSO algorithm with K-Means algorithm for NEWS articles clustering. So this algorithm can get advantage of both methods of PSO and K-Means. The experimental results shown the proposed method is efficient and provide best clustering results in few numbers of iterations. This algorithm is applied for three different types of data set.
机译:基于模糊优化的数据聚类是重要的数据挖掘工具之一,它是对现实问题的动态研究。 K-Means算法是最流行的聚类方法,因为它非常易于实现,并且在大多数情况下可以快速工作。但是,这种K-means算法对初始化很敏感,并且很容易陷入局部最优中。粒子群优化(PSO)是解决大多数优化问题的全局优化技术之一。在目前的趋势中,人们越来越关注模糊模型的应用,如果数据集过于复杂以至于无法分析或可用信息不准确或不确定,则该模型将给出有希望且有效的结果。本文提出了一种改进的PSO算法和K-Means算法,用于NEWS文章聚类。因此,该算法可以同时利用PSO和K-Means的方法。实验结果表明,该方法是有效的,并且在很少的迭代次数下提供了最佳的聚类结果。该算法适用于三种不同类型的数据集。

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