Abstract:
A thin-tailed vector random field, referred to as a $K$-differenced vector random field, is introduced.
Its finite-dimensional densities are the differences of two Bessel functions of second order, whenever
they exist, and its finite-dimensional characteristic functions have simple closed forms as the
differences of two power functions or logarithm functions. Its finite-dimensional distributions have thin
tails, even thinner than those of a Gaussian one, and it reduces to a Linnik or Laplace vector random
field in a limiting case. As one of its most valuable properties, a $K$-differenced vector random field is
characterized by its mean and covariance matrix functions just like a Gaussian one. Some covariance
matrix structures are constructed in this paper for not only the $K$-differenced vector random field, but
also for other second-order elliptically contoured vector random fields. Properties of the multivariate
$K$-differenced distribution are also studied.
Keywords:covariance matrix function, cross covariance, direct covariance, elliptically contoured random field,
Gaussian random field, $K$-differenced distribution, spherically invariant random
field, stationary, variogram.