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Unveil stock correlation via a new tensor-based decomposition method

机译:通过新的张量分解方法揭开股票关联

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Portfolio allocation and risk management make use of correlation matrices and heavily rely on the choice of a proper correlation matrix to be used. In this regard, one important question is related to the choice of the proper sample period to be used to estimate a stable correlation matrix. This paper addresses this question and proposes a new methodology to estimate the correlation matrix which does not depend on the chosen sample period. This new methodology is based on tensor factorization techniques. In particular, combining and normalizing factor components, we build a correlation matrix which shows emerging structural dependency properties not affected by the sample period. To retrieve the factor components, we propose a new tensor decomposition (which we name Slice-Diagonal Tensor (SDT) factorization) and compare it to the two most used tensor decompositions, the Tucker and the PARAFAC. We have that the new factorization is more parsimonious than the Tucker decomposition and more flexible than the PARAFAC. We apply our methodology to simulated datasets using different simulation parameters. Results are robust to different simulation settings and confirm the stability of the correlation matrix generated for two independent samples. The proposed tool applied to two independent samples of empirical data shows that the correlation matrices generated have a block structure representing stock industries. Furthermore, in accordance to two non-parametric tests, namely Kruskal-Wallis and Kolmogorov-Smirnov tests, the correlation matrices are statistically time invariant and hence, stable. Since the resulting correlation matrix is characterized by stability and emerging structural dependency properties, it can be used as alternative to other correlation matrices type of measures, including the Pearson correlation. (c) 2020 Elsevier B.V. All rights reserved.
机译:投资组合分配和风险管理利用相关矩阵并严重依赖于使用适当的相关矩阵的选择。在这方面,一个重要问题与用于估计稳定相关矩阵的适当样本周期的选择是相关的。本文解决了这个问题,提出了一种新方法来估计不依赖于所选的采样周期的相关矩阵。这种新方法基于张量因子化技术。特别地,组合和归一化因子分量,我们构建了一个相关矩阵,其显示了不受样本周期影响的新出现的结构依赖性属性。要检索因子组件,我们提出了一种新的张量分解(我们命名切片对角线张量(SDT)分解),并将其与两个最常用的张量分解,Tucker和Parafacac进行比较。我们有新的分解比Tucker分解更加令人惊讶,而不是比Parafacac更灵活。我们使用不同的仿真参数将方法应用于模拟数据集。结果对不同的仿真设置具有鲁棒性,并确认两个独立样本所生成的相关矩阵的稳定性。应用于两个独立的经验数据样本的所提出的工具表明,所产生的相关矩阵具有代表股票行业的块结构。此外,根据两个非参数测试,即Kruskal-Wallis和Kolmogorov-Smirnov测试,相关矩阵是统计上的不变性,因此稳定。由于所得到的相关矩阵的特征在于稳定性和新出现的结构依赖性特性,因此可以用作其他相关矩阵类型的措施的替代,包括Pearson相关性。 (c)2020 Elsevier B.v.保留所有权利。

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