English

Large Deviations for Random Matricial Moment Problems

Probability 2011-10-17 v3

Abstract

We consider the moment space MnK\mathcal{M}_n^{K} corresponding to p×pp \times p complex matrix measures defined on KK (K=[0,1]K=[0,1] or K=\DK=\D). We endow this set with the uniform law. We are mainly interested in large deviations principles (LDP) when nn \rightarrow \infty. First we fix an integer kk and study the vector of the first kk components of a random element of MnK\mathcal{M}_n^{K}. We obtain a LDP in the set of kk-arrays of p×pp\times p matrices. Then we lift a random element of MnK\mathcal{M}_n^{K} into a random measure and prove a LDP at the level of random measures. We end with a LDP on Carth\'eodory and Schur random functions. These last functions are well connected to the above random measure. In all these problems, we take advantage of the so-called canonical moments technique by introducing new (matricial) random variables that are independent and have explicit distributions.

Keywords

Cite

@article{arxiv.1011.0299,
  title  = {Large Deviations for Random Matricial Moment Problems},
  author = {Fabrice Gamboa and Jan Nagel and Alain Rouault and Jens Wagener},
  journal= {arXiv preprint arXiv:1011.0299},
  year   = {2011}
}

Comments

34 pages

R2 v1 2026-06-21T16:37:01.450Z