开始绘制概念大纲图,掌握聚类分析的丛林法则

Iven Van Mechelen, Christian Hennig, Henk A. L. Kiers
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摘要

聚类分析领域是一个非常丰富的多学科交汇点,离散数学、数值分析、统计学、数据分析、数据科学和计算机科学(包括机器学习、数据挖掘和知识发现)等领域都在研究和开发聚类分析方法。然而,硬币的另一面是,该领域存在着严重的可及性问题,而且在许多相当孤立的岛屿上充斥着分裂。作为一条出路,本文在总体概念框架和共同语言的基础上,以纲要图的形式对整个聚类领域进行了全面深入的回顾。通过这一框架,我们希望为聚类领域的结构化做出贡献,为通常在完全不同的背景下开发和研究的方法定性,为确定方法之间的联系,以及为在数据分析实践中优化设置聚类分析引入参考框架:技术> 结构发现与聚类
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Onset of a conceptual outline map to get a hold on the jungle of cluster analysis
The domain of cluster analysis is a meeting point for a very rich multidisciplinary encounter, with cluster‐analytic methods being studied and developed in discrete mathematics, numerical analysis, statistics, data analysis, data science, and computer science (including machine learning, data mining, and knowledge discovery), to name but a few. The other side of the coin, however, is that the domain suffers from a major accessibility problem as well as from the fact that it is rife with division across many pretty isolated islands. As a way out, the present paper offers a thorough and in‐depth review of the clustering domain as a whole under the form of an outline map based on an overarching conceptual framework and a common language. With this framework we wish to contribute to structuring the clustering domain, to characterizing methods that have often been developed and studied in quite different contexts, to identifying links between methods, and to introducing a frame of reference for optimally setting up cluster analyses in data‐analytic practice.This article is categorized under: Technologies > Structure Discovery and Clustering
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