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%T Random matrix ensembles of time-lagged correlation matrices: derivation of eigenvalue spectra and analysis of financial time-series
%A Thurner, Stefan
%A Biely, Christoly
%J Quantitative Finance
%N 7
%P 705-722
%V 8
%D 2008
%K Stochastic analysis; Adaptive behaviour; Agent based modelling; Asset pricing; Complexity in economics; Financial time series
%= 2011-03-17T09:26:00Z
%~ http://www.peerproject.eu/
%> https://nbn-resolving.org/urn:nbn:de:0168-ssoar-221153
%X We derive the exact form of the eigenvalue spectra of correlation matrices derived from a set of time-shifted, finite Brownian random walks (time-series). These matrices can be seen as real, asymmetric  random matrices where the  time-shift superimposes some  structure. 
We demonstrate that for large matrices the associated eigenvalue spectrum is  circular symmetric 
in the complex plane.  This fact allows us to exactly compute the eigenvalue density  via an inverse Abel-transform of the density of the {\it symmetrized} problem.
We demonstrate the validity of this approach numerically.
Theoretical findings are  next compared with eigenvalue densities obtained from actual 
high frequency (5 min) data of the S\&P500 and discuss the observed deviations. 
We identify various non-trivial, non-random patterns and find asymmetric dependencies associated with eigenvalues departing strongly from the Gaussian prediction in the imaginary part.
For the same time-series, with the market contribution removed, we observe strong clustering of stocks, into causal sectors. We finally comment on the stability of the observed patterns.
%C GBR
%G en
%9 journal article
%W GESIS - http://www.gesis.org
%~ SSOAR - http://www.ssoar.info