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A Cluster Analysis of Stock Market Data Using Hierarchical SOMs

机译:使用等级SOMS股票市场数据的集群分析

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The analysis of stock markets has become relevant mainly because of its financial implications. In this paper, we propose a novel methodology for performing a structured cluster analysis of stock market data. Our proposed method uses a tree-based neural network called the TTOSOM. The TTOSOM performs self-organization to construct tree-based clusters of vector data in the multi-dimensional space. The resultant tree possesses interesting mathematical properties such as a succinct representation of the original data distribution, and a preservation of the underlying topology. In order to demonstrate the capabilities of our method, we analyze 206 assets of the Italian stock market. We were able to establish topological relationships between various companies traded on the Italian stock market and visually inspect the resultant taxonomy. The results that we obtained, briefly reported here (but more elaborately in [10]), were amazingly accurate and reflected the real-life relationships between the stocks.
机译:股票市场分析主要是由于其财务影响。在本文中,我们提出了一种新的方法,用于执行股票市场数据的结构化集群分析。我们所提出的方法使用一种称为TTOSOM的基于树的神经网络。 TTOSOM执行自组织以在多维空间中构建基于树的矢量数据集群。得到的树具有有趣的数学属性,例如原始数据分布的简洁表示,以及底层拓扑的保存。为了展示我们方法的能力,我们分析了意大利股市的206个资产。我们能够建立在意大利股市上交易的各种公司之间的拓扑关系,并视觉检查所产生的分类。我们在此简要介绍的结果(但更精心地在[10])上令人惊讶地准确,并反映了股票之间的现实生活关系。

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