基于聚类算法的高维数据分析研究

Ping Zong, J. Jiang, Jun Qin
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引用次数: 2

摘要

随着大数据的快速发展,高维数据的规模、维度、多样性和稀疏性限制了传统聚类算法的有效性。本文主要研究高维数据聚类问题。本文从传统的k均值聚类算法和基于自表示模型的子空间聚类算法出发,在现有聚类算法的基础上设计并实现了一种改进算法。改进算法结合“距离优化法”和“密度法”确定初始聚类中心,具有更好的聚类质量。通过仿真实验验证了改进算法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of High-Dimensional Data Analysis based on Clustering Algorithm
With the rapid development of big data, the scale, dimensions, diversity and sparsity of high-dimensional data restrict the effectiveness of traditional clustering algorithms. This paper mainly focuses on high-dimensional data clustering. Starting from the traditional K-means clustering algorithm and subspace clustering algorithm based on self-representation model, an improved algorithm is designed and implemented based on the existing clustering algorithm in this paper. The improved algorithm has better clustering quality by combining the "distance optimization method" and the "density method" to determine the initial clustering center. The feasibility and effectiveness of improved algorithm are verified through simulation experiments.
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