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首页> 外文期刊>Acta Physica Polonica. B, Particle Physics and Field Theory, Nuclear Physics, Theory of Relativity >SECTOR IDENTIFICATION IN A SET OF STOCK RETURN TIME SERIES TRADED AT THE LONDON STOCK EXCHANGE
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SECTOR IDENTIFICATION IN A SET OF STOCK RETURN TIME SERIES TRADED AT THE LONDON STOCK EXCHANGE

机译:在伦敦证券交易所交易的一组股票返回时间序列中的行业标识

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摘要

We compare some methods recently used in the literature to detect the existence of a certain degree of common behavior of stock returns belonging to the same economic sector. Specifically, we discuss methods based on random matrix theory and hierarchical clustering techniques. We apply these methods to a portfolio of stocks traded at the London Stock Exchange. The investigated time series are recorded both at a daily time horizon and at a 5-minute time horizon. The correlation coefficient matrix is very different at different time horizons confirming that more structured correlation coefficient matrices are observed for long time horizons. All the considered methods are able to detect economic information and the presence of clusters characterized by the economic sector of stocks. However, different methods present a different degree of sensitivity with respect to different sectors. Our comparative analysis suggests that the application of just a single method could not be able to extract all the economic information present in the correlation coefficient matrix of a stock portfolio.
机译:我们比较了文献中最近使用的一些方法,以检测属于同一经济部门的某种程度的股票收益存在某种共同行为。具体来说,我们讨论基于随机矩阵理论和层次聚类技术的方法。我们将这些方法应用于在伦敦证券交易所交易的股票组合。在每日时间范围和5分钟时间范围内记录调查的时间序列。相关系数矩阵在不同的时间范围内非常不同,这证实了在较长的时间范围内观察到更多结构化的相关系数矩阵。所有考虑的方法都能够检测经济信息以及以股票经济部门为特征的集群的存在。但是,不同的方法对不同的扇区具有不同程度的敏感性。我们的比较分析表明,仅使用一种方法就无法提取股票投资组合的相关系数矩阵中存在的所有经济信息。

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