DDCAL:基于迭代特征缩放的数据均匀分布到低方差聚类。

IF 1.8 4区 计算机科学 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Marian Lux, Stefanie Rinderle-Ma
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引用次数: 1

摘要

这项工作研究了聚类一维数据点的问题,使它们均匀分布在给定数量的低方差聚类上。一个应用程序是对地形图或业务流程模型上的数据进行可视化,但不过分强调异常值。这使得检测和区分较小的集群成为可能。基于迭代特征缩放的启发式算法DDCAL(一维分布聚类算法)可以生成稳定的聚类结果。基于5个不同分布的人工数据集和4个反映不同用例的真实数据集,验证了DDCAL算法的有效性。此外,利用这些数据集,将DDCAL的结果与现有的11种聚类算法进行了比较。通过在地形图上可视化流行病和人口数据以及在过程模型上的过程挖掘结果,说明了DDCAL算法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DDCAL: Evenly Distributing Data into Low Variance Clusters Based on Iterative Feature Scaling.

DDCAL: Evenly Distributing Data into Low Variance Clusters Based on Iterative Feature Scaling.

This work studies the problem of clustering one-dimensional data points such that they are evenly distributed over a given number of low variance clusters. One application is the visualization of data on choropleth maps or on business process models, but without over-emphasizing outliers. This enables the detection and differentiation of smaller clusters. The problem is tackled based on a heuristic algorithm called DDCAL (1d distribution cluster algorithm) that is based on iterative feature scaling which generates stable results of clusters. The effectiveness of the DDCAL algorithm is shown based on 5 artificial data sets with different distributions and 4 real-world data sets reflecting different use cases. Moreover, the results from DDCAL, by using these data sets, are compared to 11 existing clustering algorithms. The application of the DDCAL algorithm is illustrated through the visualization of pandemic and population data on choropleth maps as well as process mining results on process models.

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来源期刊
Journal of Classification
Journal of Classification 数学-数学跨学科应用
CiteScore
3.60
自引率
5.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: To publish original and valuable papers in the field of classification, numerical taxonomy, multidimensional scaling and other ordination techniques, clustering, tree structures and other network models (with somewhat less emphasis on principal components analysis, factor analysis, and discriminant analysis), as well as associated models and algorithms for fitting them. Articles will support advances in methodology while demonstrating compelling substantive applications. Comprehensive review articles are also acceptable. Contributions will represent disciplines such as statistics, psychology, biology, information retrieval, anthropology, archeology, astronomy, business, chemistry, computer science, economics, engineering, geography, geology, linguistics, marketing, mathematics, medicine, political science, psychiatry, sociology, and soil science.
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