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首页> 外文期刊>Physical review, E. Statistical physics, plasmas, fluids, and related interdisciplinary topics >Random matrix approach to cross correlations in financial data - art. no. 066126
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Random matrix approach to cross correlations in financial data - art. no. 066126

机译:金融数据互相关的随机矩阵方法-艺术。没有。 066126

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We analyze cross correlations between price fluctuations of different stocks using methods of random matrix theory (RMT). Using two large databases, we calculate cross-correlation matrices C of returns constructed from (i) 30-min returns of 1000 US stocks for the 2-yr period 1994-1995, (ii) 30-min returns of 881 US stocks for the 2-yr period 1996-1997, and (iii) 1-day returns of 422 US stocks for the 35-yr period 1962-1996. We test the statistics of the eigenvalues lambda(i) of C against a "null hypothesis" - a random correlation matrix constructed from mutually uncorrelated time series. We find that a majority of the eigenvalues of C fall within the RMT bounds [lambda(-),lambda(+)] for the eigenvalues of random correlation matrices. We test the eigenvalues of C within the RMT bound for universal properties of random matrices and find good agreement with the results for the Gaussian orthogonal ensemble of random matrices-implying a large degree of randomness in the measured cross-correlation coefficients. Further, we find that the distribution of eigenvector components for the eigenvectors corresponding to the eigenvalues outside the RMT bound display systematic deviations from the RMT prediction. In addition, we find that these "deviating eigenvectors" are stable in time. We analyze the components of the deviating eigenvectors and find that the largest eigenvalue corresponds to an influence common to all stocks. Our analysis of the remaining deviating eigenvectors shows distinct groups, whose identities correspond to conventionally identified business sectors. Finally, we discuss applications to the construction of portfolios of stocks that have a stable ratio of risk to return. [References: 84]
机译:我们使用随机矩阵理论(RMT)的方法分析不同股票价格波动之间的相互关系。使用两个大型数据库,我们计算出以下收益的互相关矩阵C:(i)1994-1995年的2年期间,1000只美国股票的30分钟收益;(ii)881只美国股票的30分钟收益。 1996-1997年的2年期,以及(iii)1962-1996年的35年期的422只美国股票的1天收益率。我们针对“零假设”(由互不相关的时间序列构成的随机相关矩阵)测试C的特征值lambda(i)的统计数据。我们发现,对于随机相关矩阵的特征值,C的大多数特征值都落在RMT范围内[lambda(-),lambda(+)]。我们测试了RMT范围内C的特征值以获取随机矩阵的通用属性,并与随机矩阵的高斯正交系综的结果找到了很好的一致性-这暗示了所测互相关系数的高度随机性。此外,我们发现对应于RMT范围外的特征值的特征向量的特征向量分量的分布显示出与RMT预测的系统偏差。另外,我们发现这些“偏离特征向量”在时间上是稳定的。我们分析了偏差特征向量的成分,发现最大特征值对应于所有股票共有的影响。我们对其余偏离特征向量的分析显示了不同的组,其标识与常规标识的业务部门相对应。最后,我们讨论了具有稳定风险收益率的股票投资组合的构建应用。 [参考:84]

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