Solution of Clusterization Problem by Graph Optimization Methods

I. Konnov, O. Kashina, E. I. Gilmanova
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引用次数: 1

Abstract

The rapid growth in the volume of processed information that takes place nowadays deter-mines the urgency of the development of methods for reducing the dimension of computational problems. One of the approaches to reducing the dimensionality of data is their clustering, i.e., uniting into maximally homogeneous groups. At the same time, it is desirable that rep-resentatives of different clusters should be as much as possible unlike each other. Along with the dimension reduction, clustering procedures have an independent value. For example, we know the market segmentation problem in economics, the feature typologization problem in sociology, faces diagnostics in geology, etc. Despite the large number of known clusterization methods, the development and study of new ones remain relevant. The reason is that there is no algorithm that would surpass all the rest by all criteria (speed, insensitivity to clusters’ size and shape, number of input parameters, etc.). In this paper, we propose a clustering algorithm based on the notions of the graph theory (namely, the maximum flow (the minimum cut) theorem) and compare the results obtained by it and by four other algorithms that belong to various classes of clusterization techniques.
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用图优化方法求解聚类问题
如今处理过的信息量迅速增长,这决定了开发降低计算问题维数的方法的紧迫性。降低数据维数的方法之一是它们的聚类,即最大限度地统一为同质组。与此同时,不同集群的代表应该尽可能地彼此不同。随着维数的降维,聚类过程有了一个独立的值。例如,我们知道经济学中的市场分割问题,社会学中的特征类型学问题,地质学中的面孔诊断问题等等。尽管已知的聚类方法数量众多,但新方法的开发和研究仍然具有重要意义。原因在于,没有一种算法能在所有标准(速度、对聚类大小和形状的不敏感性、输入参数的数量等)上都超越其他所有算法。在本文中,我们提出了一种基于图论概念(即最大流量(最小切割)定理)的聚类算法,并将其与属于不同类聚类技术的其他四种算法得到的结果进行了比较。
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CiteScore
0.60
自引率
0.00%
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0
审稿时长
17 weeks
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