Hierarchical topological clustering learns stock market sectors

K. Doherty, R. Adams, N. Davey, W. Pensuwon
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引用次数: 15

Abstract

The breakdown of financial markets into sectors provides an intuitive classification for groups of companies. The allocation of a company to a sector is an expert task, in which the company is classified by the activity that most closely describes the nature of the company's business. Individual share price movement is dependent upon many factors, but there is an expectation for shares within a market sector to move broadly together. We are interested in discovering if share closing prices do move together, and whether groups of shares that do move together are identifiable in terms of industrial activity. Using TreeGNG, a hierarchical clustering algorithm, on a time series of share closing prices, we have identified groups of companies that cluster into clearly identifiable groups. These clusters compare favourably to a globally accepted sector classification scheme, and in our opinion, our method identifies sector structure clearer than a statistical agglomerative hierarchical clustering method
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层次拓扑聚类学习股票市场部门
将金融市场划分为多个部门,为公司集团提供了一种直观的分类。将公司分配到一个行业是一项专家任务,根据最能描述公司业务性质的活动对公司进行分类。个别股票的价格变动取决于许多因素,但人们期望一个市场部门内的股票广泛地一起移动。我们感兴趣的是发现股票收盘价是否会一起变动,以及在工业活动方面是否可以识别出一起变动的股票组。使用TreeGNG,一种分层聚类算法,在股票收盘价的时间序列上,我们已经确定了一些公司,这些公司聚集在清晰可识别的组中。这些聚类与全球公认的行业分类方案相比较有利,并且在我们看来,我们的方法比统计聚集分层聚类方法更清楚地识别行业结构
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