In this paper we propose a perturbative method for the reconstruction of the
covariance matrix of a multinormal distribution, under the assumption that the
only available information amounts to the covariance matrix of a spherically
truncated counterpart of the same distribution. We expand the relevant
equations up to the fourth perturbative order and discuss the analytic
properties of the first few perturbative terms. We finally compare the proposed
approach with an exact iterative algorithm (presented in Palombi et al. (2017))
in the hypothesis that the spherically truncated covariance matrix is estimated
from samples of various sizes.Comment: 39 pages, 7 figures. v2: version accepted for publication in J. Comp.
Appl. Mat