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      PDP: A General Neural Framework for Learning Constraint Satisfaction Solvers

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          Abstract

          There have been recent efforts for incorporating Graph Neural Network models for learning full-stack solvers for constraint satisfaction problems (CSP) and particularly Boolean satisfiability (SAT). Despite the unique representational power of these neural embedding models, it is not clear how the search strategy in the learned models actually works. On the other hand, by fixing the search strategy (e.g. greedy search), we would effectively deprive the neural models of learning better strategies than those given. In this paper, we propose a generic neural framework for learning CSP solvers that can be described in terms of probabilistic inference and yet learn search strategies beyond greedy search. Our framework is based on the idea of propagation, decimation and prediction (and hence the name PDP) in graphical models, and can be trained directly toward solving CSP in a fully unsupervised manner via energy minimization, as shown in the paper. Our experimental results demonstrate the effectiveness of our framework for SAT solving compared to both neural and the state-of-the-art baselines.

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          Most cited references11

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          Geometric Deep Learning: Going beyond Euclidean data

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            Sequential Model-Based Optimization for General Algorithm Configuration

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              Survey propagation: An algorithm for satisfiability

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                Author and article information

                Journal
                05 March 2019
                Article
                1903.01969
                9b79540b-e563-43ad-a1a8-f27f7e8b1d8e

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                Neuro-symbolic Methods, Neural Combinatorial Optimization, Geometric Deep Learning
                cs.LG cs.LO cs.NE stat.ML

                Theoretical computer science,Machine learning,Neural & Evolutionary computing,Artificial intelligence

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