基于中心的聚类性能分析中任意形状和密度的IDCUP算法

Q2 Computer Science
S. Altaf, Muhammad Waseem Waseem, Laila Kazmi
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引用次数: 3

摘要

目的/目的聚类技术通常被认为是为了确定数据集中的重要和有意义的子类。它是一种无监督类型的机器学习(ML),其目标是根据对象的相似性形成组,并用于确定数据的不同特征之间的隐含关系。聚类分析在处理不同数据集中的任意形状问题时,被认为是数据探索中的一个重要问题领域。在大数据集上聚类面临以下挑战:(1)具有任意形状的聚类;(2)较少的知识发现过程来决定可能的输入特征;(3)大数据规模的可扩展性。基于密度的聚类被认为是确定任意形状聚类的主要方法。文献中经常引用的现有基于密度的聚类方法已经在包含不同密度嵌套聚类的数据集上的行为方面进行了检查。对于这样的数据集,现有的方法是不够的或不理想的,因为它们通常将数据划分到无法嵌套的集群中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IDCUP Algorithm to Classifying Arbitrary Shapes and Densities for Center-based Clustering Performance Analysis
Aim/Purpose The clustering techniques are normally considered to determine the significant and meaningful subclasses purposed in datasets. It is an unsupervised type of Machine Learning (ML) where the objective is to form groups from objects based on their similarity and used to determine the implicit relationships between the different features of the data. Cluster Analysis is considered a significant problem area in data exploration when dealing with arbitrary shape problems in different datasets. Clustering on large data sets has the following challenges: (1) clusters with arbitrary shapes; (2) less knowledge discovery process to decide the possible input features; (3) scalability for large data sizes. Density-based clustering has been known as a dominant method for determining the arbitrary-shape clusters. Background Existing density-based clustering methods commonly cited in the literature have been examined in terms of their behavior with data sets that contain nested clusters of varying density. The existing methods are not enough or ideal for such data sets, because they typically partition the data into clusters that cannot be nested.
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
14
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