We explicitly characterize
the robust counterpart of a linear programming problem with uncertainty set
described by an arbitrary norm. Our approach encompasses several approaches
from the literature and provides guarantees for constraint violation under
probabilistic models that allow arbitrary dependencies in the distribution of
the uncertain coefficients.