基于原型的聚类方法比较分析

Rexhep Rada, Erind Bedalli, Sokol Shurdhi, B. Çiço
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引用次数: 0

摘要

在机器学习领域,聚类是一种基本的无监督学习操作,旨在将数据集的实例划分为集群(即组,子集),使同一集群中的实例彼此非常相似,而与其他集群有很大不同。在广泛的聚类方法中,基于原型的方法通过原型(即质心)来表征每个聚类,并采用一种重新定位方案,在目标函数的指导下将实例迭代地重新分配到聚类中。本文重点介绍了几种基于原型的方法,包括K-means、k - medium、k -median、Fuzzy C-means和Kernel K-means。在原始基准数据集、扭曲基准数据集和合成数据集上对这些算法进行了实验分析。比较分析主要集中在两个方面:准确性和对噪声和异常值的敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative analysis on prototype-based clustering methods
In the machine learning domain, clustering is a fundamental unsupervised learning operation which aims to partition the instances of a dataset into clusters (i.e, groups, subsets) such that instances within the same cluster are much similar to each other and much different from the other clusters. In the broad spectrum of clustering methods, prototype-based methods characterize each cluster through a prototype (i.e. centroid) and a relocation scheme is employed to iteratively redistribute the instances into the clusters, guided by an objective function. In this paper, several prototype-based methods are brought into focus, including K-means, K-medoids, K-medians, Fuzzy C-means and Kernel K-means. These algorithms are experimentally analyzed on several original benchmark datasets, distorted benchmark datasets and synthetic datasets. The comparative analysis is oriented in two main aspects: accuracy and sensitivity to noise and outliers.
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