Limiting distributions for eigenvalues of sample correlation matrices from heavy-tailed populations

Consider a -dimensional population with iid coordinates in the domain of attraction of a stable distribution with index . Since the variance of is infinite, the sample covariance matrix based on a sample from the population is not well behaved and it is of interest to use instead the sample correlation matrix . This paper finds the limiting distributions of the eigenvalues of when both the dimension and the sample size grow to infinity such that . The family of limiting distributions is new and depends on the two parameters and . The moments of are fully identified as sum of two contributions: the first from the classical Mar\v{c}enko-Pastur law and a second due to heavy tails. Moreover, the family has continuous extensions at the boundaries and leading to the Mar\v{c}enko-Pastur law and a modified Poisson distribution, respectively. Our proofs use the method of moments, the path-shortening algorithm developed in [18] and some novel graph counting combinatorics. As a consequence, the moments of are expressed in terms of combinatorial objects such as Stirling numbers of the second kind. A simulation study on these limiting distributions is also provided for comparison with the Mar\v{c}enko-Pastur law.
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