预测最优聚类数的聚类算法

A. Agárdi, L. Kovács
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引用次数: 0

摘要

聚类是一种广泛使用的对象分组技术。彼此相似的对象应该在同一个集群中。一般聚类算法的一个缺点是用户必须预先指定聚类的数量作为输入参数。这是一个主要的缺点,因为用户可能无法正确指定聚类的数量,并且算法因此创建了将非常不同的元素放入同一聚类的聚类。本文的目的是提出我们的表示和评估技术,以自动确定最优聚类计数。通过这种技术,算法本身就决定了簇的数量。本文首先介绍了经典的聚类算法,然后给出了聚类算法的构造和改进算法,以及我们的表示和评估方法。然后将算法的性能与测试结果进行了比较。
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Clustering algorithms with prediction the optimal number of clusters
The clustering is a widely used technique for grouping of objects. The objects, which are similar to each other should be in the same cluster. One disadvantage of general clustering algorithms is that the user must specify the number of clusters in advance, as input parameter. This is a major drawback since it is possible that the user cannot specify the number of clusters correctly, and the algorithm thus creates a clustering that puts very different elements into the same cluster. The aim of this paper is to present our representation and evaluation technique to determine the optimal cluster count automatically. With this technique, the algorithms itself determine the number of clusters. In this paper first, the classical clustering algorithms are introduced, then the construction and improvement algorithms and then our representation and evaluation method are presented. Then the performance of the algorithms with test results are compared.
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来源期刊
Journal of Applied Research and Technology
Journal of Applied Research and Technology 工程技术-工程:电子与电气
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: The Journal of Applied Research and Technology (JART) is a bimonthly open access journal that publishes papers on innovative applications, development of new technologies and efficient solutions in engineering, computing and scientific research. JART publishes manuscripts describing original research, with significant results based on experimental, theoretical and numerical work. The journal does not charge for submission, processing, publication of manuscripts or for color reproduction of photographs. JART classifies research into the following main fields: -Material Science: Biomaterials, carbon, ceramics, composite, metals, polymers, thin films, functional materials and semiconductors. -Computer Science: Computer graphics and visualization, programming, human-computer interaction, neural networks, image processing and software engineering. -Industrial Engineering: Operations research, systems engineering, management science, complex systems and cybernetics applications and information technologies -Electronic Engineering: Solid-state physics, radio engineering, telecommunications, control systems, signal processing, power electronics, electronic devices and circuits and automation. -Instrumentation engineering and science: Measurement devices (pressure, temperature, flow, voltage, frequency etc.), precision engineering, medical devices, instrumentation for education (devices and software), sensor technology, mechatronics and robotics.
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