Research on complex attribute big data classification based on iterative fuzzy clustering algorithm

Web Intell. Pub Date : 2021-11-17 DOI:10.3233/web-210463
Li Qian
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Abstract

In order to overcome the low classification accuracy of traditional methods, this paper proposes a new classification method of complex attribute big data based on iterative fuzzy clustering algorithm. Firstly, principal component analysis and kernel local Fisher discriminant analysis were used to reduce dimensionality of complex attribute big data. Then, the Bloom Filter data structure is introduced to eliminate the redundancy of the complex attribute big data after dimensionality reduction. Secondly, the redundant complex attribute big data is classified in parallel by iterative fuzzy clustering algorithm, so as to complete the complex attribute big data classification. Finally, the simulation results show that the accuracy, the normalized mutual information index and the Richter’s index of the proposed method are close to 1, the classification accuracy is high, and the RDV value is low, which indicates that the proposed method has high classification effectiveness and fast convergence speed.
基于迭代模糊聚类算法的复杂属性大数据分类研究
为了克服传统方法分类精度低的问题,本文提出了一种基于迭代模糊聚类算法的复杂属性大数据分类新方法。首先,利用主成分分析和核局部Fisher判别分析对复杂属性大数据进行降维处理;然后,引入Bloom Filter数据结构,通过降维消除复杂属性大数据的冗余。其次,采用迭代模糊聚类算法对冗余的复杂属性大数据进行并行分类,完成复杂属性大数据分类;最后,仿真结果表明,所提方法的准确率、归一化互信息指数和Richter指数均接近于1,分类精度较高,RDV值较低,表明所提方法分类有效性高,收敛速度快。
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