Adaptive Peak Environmental Density Clustering Algorithm in Cloud Computing Technology

Qiangshan Zhang
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Abstract

In order to get sparsity clustering ability of unbalanced cloud data set, combined with adaptive environment density screening, data clustering was carried out, and an improved adaptive environment density peak clustering algorithm under cloud computing technology was proposed. The storage structure model of grid sparse unbalanced cloud data set is constructed, and structure of grid sparse unbalanced cloud data set is reconstructed by combining feature space reconstruction technology. Rough feature quantity of grid sparse unbalanced cloud data set is extracted, and feature extraction and registration are carried out through strict feature registration method. Cloud fusion and peak feature clustering were carried out according to the grid block distribution of the data set. Peak feature quantities of the grid sparse unbalanced cloud data set were extracted, and binary semantic feature distributed detection of the data was carried out.
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云计算技术中的自适应峰值环境密度聚类算法
为了获得不平衡云数据集的稀疏聚类能力,结合自适应环境密度筛选对数据进行聚类,提出了一种改进的云计算技术下的自适应环境密度峰值聚类算法。构建网格稀疏非平衡云数据集存储结构模型,结合特征空间重构技术重构网格稀疏非平衡云数据集结构。提取网格稀疏不平衡云数据集的粗糙特征量,并通过严格的特征配准方法进行特征提取和配准。根据数据集的网格块分布进行云融合和峰值特征聚类。提取网格稀疏不平衡云数据集的峰值特征量,对数据进行二值语义特征分布式检测。
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