scholarly journals Spectral Properties of Rescaled Sample Correlation Matrix

2023 ◽  
Author(s):  
Yanqing Yin ◽  
Changcheng Li ◽  
Guoliang Tian ◽  
Shurong Zheng
2018 ◽  
Vol 21 (03) ◽  
pp. 1850022 ◽  
Author(s):  
RAPHAEL DOUADY ◽  
ANTOINE KORNPROBST

The aim of this work is to build a class of financial crisis indicators based on the spectral properties of the dynamics of market data. After choosing an appropriate size for a rolling window, the historical market data inside this rolling window are seen every trading day as a random matrix from which a correlation matrix is obtained. Our goal is to study the correlations between the assets that constitute this market and look for reproducible patterns that are indicative of an impending financial crisis. A weighting of the assets in the market is then introduced and is proportional to the daily traded volumes. This manipulation is realized in order to give more importance to the most liquid assets. Our financial crisis indicators are based on the spectral radius of this weighted correlation matrix. The idea behind this type of financial crisis indicators is that large eigenvalues are a sign of dynamic instability. The out-of-sample predictive power of the financial crisis indicators in this framework is then demonstrated, in particular by using them as decision-making tools in a protective put strategy.


2017 ◽  
Vol 78 (4) ◽  
pp. 589-604 ◽  
Author(s):  
Samuel Green ◽  
Yuning Xu ◽  
Marilyn S. Thompson

Parallel analysis (PA) assesses the number of factors in exploratory factor analysis. Traditionally PA compares the eigenvalues for a sample correlation matrix with the eigenvalues for correlation matrices for 100 comparison datasets generated such that the variables are independent, but this approach uses the wrong reference distribution. The proper reference distribution of eigenvalues assesses the kth factor based on comparison datasets with k−1 underlying factors. Two methods that use the proper reference distribution are revised PA (R-PA) and the comparison data method (CDM). We compare the accuracies of these methods using Monte Carlo methods by manipulating the factor structure, factor loadings, factor correlations, and number of observations. In the 17 conditions in which CDM was more accurate than R-PA, both methods evidenced high accuracies (i.e.,>94.5%). In these conditions, CDM had slightly higher accuracies (mean difference of 1.6%). In contrast, in the remaining 25 conditions, R-PA evidenced higher accuracies (mean difference of 12.1%, and considerably higher for some conditions). We consider these findings in conjunction with previous research investigating PA methods and concluded that R-PA tends to offer somewhat stronger results. Nevertheless, further research is required. Given that both CDM and R-PA involve hypothesis testing, we argue that future research should explore effect size statistics to augment these methods.


1985 ◽  
Vol 10 (4) ◽  
pp. 384 ◽  
Author(s):  
John R. Reddon ◽  
Douglas N. Jackson ◽  
Donald Schopflocher

1985 ◽  
Vol 10 (4) ◽  
pp. 384-388 ◽  
Author(s):  
John R. Reddon ◽  
Douglas N. Jackson ◽  
Donald Schopflocher

Computer sampling from a multivariate normal spherical population was used to evaluate the type one error rates for a test of sphericity based on the distribution of the determinant of the sample correlation matrix. The range of variates considered was 5 to 25, and the range of observations considered was 10 to 1,000. The type one error rates were estimated in each condition with 5,000 replications. The c.d.f. obtained from the asymptotic χ2 resulted in excessive type one errors in the conditions where the ratio of the sample size to the number of variates was small. The c.d.f. with finite sample corrections involving terms up to ο( N−3) performed much better in small samples but resulted in a biased test when the sample size was less than twice the number of variates.


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