We present a mechanism for computing asymptotically stable school optimal
matchings, while guaranteeing that it is an asymptotic dominant strategy for
every student to report their true preferences to the mechanism. Our main tool
in this endeavor is differential privacy: we give an algorithm that coordinates
a stable matching using differentially private signals, which lead to our
truthfulness guarantee. This is the first setting in which it is known how to
achieve nontrivial truthfulness guarantees for students when computing school
optimal matchings, assuming worst- case preferences (for schools and students)
in large markets