Article ID Journal Published Year Pages File Type
978823 Physica A: Statistical Mechanics and its Applications 2006 18 Pages PDF
Abstract
We analyse the structure of the distribution of eigenvalues of the stock market correlation matrix with increasing length of the time series representing the price changes. We use 100 highly capitalized stocks from the American market and relate the result to the corresponding ensemble of Wishart random matrices. It turns out that systematically more eigenvalues remain beyond the borders prescribed by this variant of the random matrix theory (RMT). This may indicate that even the bulk of the spectrum of the stock market correlation matrix carries some sort of correlations that are masked by a measurement noise when the time series used to construct the matrix are short. We also study some other characteristics of the “noisy” eigensignals, like their return distributions, temporal correlations or their multifractal spectra, and the results support the above conclusions.
Related Topics
Physical Sciences and Engineering Mathematics Mathematical Physics
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