Abstract
We propose a new method for conformant planning
based on two ideas. First given a small sample of
the initial belief state we reduce conformant planning for this sample to a classical planning problem, giving us a candidate solution. Second we
exploit regression as a way to compactly represent necessary conditions for such a solution to be
valid for the non-deterministic setting. If necessary,
we use the resulting formula to extract a counterexample to populate our next sampling. Our experiments show that this approach is competitive on a
class of problems that are hard for traditional planners, and also returns generally shorter plans. We
are also able to demonstrate unsatisfiability of some
problems.