We show that results from the theory of random matrices are potentially of
great interest to understand the statistical structure of the empirical cor
relation matrices appearing in the study of multivariate time series. The c
entral result of the present study, which focuses on the case of financial
price fluctuations, is the remarkable agreement between the theoretical pre
diction (based on the assumption that the correlation matrix is random) and
empirical data concerning the density of eigenvalues associated to the tim
e series of the different stocks of the S&P 500 (or other major markets). I
n particular, the present study raises serious doubts on the blind use of e
mpirical correlation matrices for risk management.