This paper addresses a multi-stage stochastic integer programming formulation of the uncapacitated lot-sizing problem under uncertainty. We show that the classical (l, S) inequalities for the deterministic lot-sizing polytope are also valid for the stochastic lot-sizing polytope. We then extend the (l, S) inequalities to a general class of valid inequalities, called the ( Q, S-Q) inequalities, and we establish necessary and sufficient conditions which guarantee that the ( Q, S-Q) inequalities are facet-defining. A separation heuristic for ( Q, S-Q) inequalities is developed and incorporated into a branch-and-cut algorithm. A computational study verifies the usefulness of the ( Q, S-Q) inequalities as cuts.