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VARSAT: Integrating Novel Probabilistic Inference Techniques with DPLL Search

机译:VARSAT:将新的概率推理技术与DPLL搜索相集成

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Probabilistic inference techniques can be used to estimate variable bias, or the proportion of solutions to a given SAT problem that fix a variable positively or negatively. Methods like Belief Propagation (BP), Survey Propagation (SP), and Expectation Maximization BP (EMBP) have been used to guess solutions directly, but intuitively they should also prove useful as variable- and value- ordering heuristics within full backtracking (DPLL) search. Here we report on practical design issues for realizing this intuition in the VARSAT system, which is built upon the full-featured MiniSat solver. A second, algorithmic, contribution is to present four novel inference techniques that combine BP/SP models with local/global consistency constraints via the EMBP framework. Empirically, we can also report exponential speed-up over existing complete methods, for random problems at the critically-constrained phase transition region in problem hardness. For industrial problems, VARSAT is slower that MiniSat, but comparable in the number and types problems it is able to solve.
机译:概率推断技术可用于估计变量偏差,或确定正或负变量的给定SAT问题的解的比例。信念传播(BP),调查传播(SP)和期望最大化BP(EMBP)之类的方法已用于直接猜测解决方案,但从直觉上讲,它们也应被证明在完全回溯(DPLL)中作为变量和值顺序启发法很有用。搜索。在这里,我们报告了在功能完备的MiniSat解算器基础上实现VARSAT系统中的直觉的实际设计问题。第二个算法贡献是提出四种新颖的推理技术,这些技术通过EMBP框架将BP / SP模型与局部/全局一致性约束相结合。根据经验,对于问题硬度在临界约束的相变区域内的随机问题,我们还可以报告现有完整方法的指数加速。对于工业问题,VARSAT比MiniSat慢,但在数量和类型上可以解决的问题可比。

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