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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Research on energy stock market associated network structure based on financial indicators
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Research on energy stock market associated network structure based on financial indicators

机译:基于财务指标的能源股市相关网络结构研究

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AbstractA financial market is a complex system consisting of many interacting units. In general, due to the various types of information exchange within the industry, there is a relationship between the stocks that can reveal their clear structural characteristics. Complex network methods are powerful tools for studying the internal structure and function of the stock market, which allows us to better understand the stock market. Applying complex network methodology, a stock associated network model based on financial indicators is created. Accordingly, we set threshold value and use modularity to detect the community network, and we analyze the network structure and community cluster characteristics of different threshold situations. The study finds that the threshold value of 0.7 is the abrupt change point of the network. At the same time, as the threshold value increases, the independence of the community strengthens. This study provides a method of researching stock market based on the financial indicators, exploring the structural similarity of financial indicators of stocks. Also, it provides guidance for investment and corporate financial management.Highlights?The structural similarity of stocks is described by multiple financial indicators.
机译:<![cdata [ Abstract 金融市场是一种复杂的系统,包括许多互动单元。一般来说,由于行业内的各种信息交换,股票之间存在关系,可以揭示其明显的结构特征。复杂的网络方法是研究股票市场内部结构和功能的强大工具,使我们能够更好地了解股票市场。应用复杂网络方法,创建了基于财务指标的股票相关网络模型。因此,我们设置阈值并使用模块化来检测社区网络,我们分析了不同阈值情况的网络结构和社区群集特征。该研究发现,阈值0.7是网络的突然变化点。与此同时,随着阈值增加,社区的独立性加强。本研究提供了一种基于财务指标研究股票市场的方法,探索了股票财务指标的结构相似性。此外,它还为投资和企业财务管理提供指导.com / xml / common / dtd“xmlns =”http://www.elsevier.com/xml/ja/dtd“class =”author-exiglights“View =”所有“ID =”D1E907“> 突出显示 股票的结构相似性由多个财务指标描述。

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