eh, this just seems like a repeat of arguments against greedy reductionism. Parsimony is good except when it loses information, but if you're losing information you're not being parsimonious correctly.
If there were a good way of distinguishing between losing information and losing noise, that would be useful.
In two posts, Bayesian stats guru Andrew Gelman argues against parsimony, though it seems to be favored 'round these parts, in particular Solomonoff Induction and BIC as imperfect formalizations of Occam's Razor.
Gelman says: