Near-Uniform Sampling of Combinatorial Spaces Using XOR Constraints
Gomes, Carla P., Sabharwal, Ashish, Selman, Bart
–Neural Information Processing Systems
We propose a new technique for sampling the solutions of combinatorial problems ina near-uniform manner. We focus on problems specified as a Boolean formula, i.e.,on SAT instances. Sampling for SAT problems has been shown to have interesting connections with probabilistic reasoning, making practical sampling algorithms for SAT highly desirable. The best current approaches are based on Markov Chain Monte Carlo methods, which have some practical limitations. Our approach exploits combinatorial properties of random parity (XOR) constraints to prune away solutions near-uniformly. The final sample is identified amongst the remaining ones using a state-of-the-art SAT solver.
Neural Information Processing Systems
Dec-31-2007