LinSATNet: The Positive Linear Satisfiability Neural Networks

Runzhong Wang, Yunhao Zhang, Ziao Guo, Tianyi Chen, Xiaokang Yang, Junchi Yan
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引用次数: 5

Abstract

Encoding constraints into neural networks is attractive. This paper studies how to introduce the popular positive linear satisfiability to neural networks. We propose the first differentiable satisfiability layer based on an extension of the classic Sinkhorn algorithm for jointly encoding multiple sets of marginal distributions. We further theoretically characterize the convergence property of the Sinkhorn algorithm for multiple marginals. In contrast to the sequential decision e.g.\ reinforcement learning-based solvers, we showcase our technique in solving constrained (specifically satisfiability) problems by one-shot neural networks, including i) a neural routing solver learned without supervision of optimal solutions; ii) a partial graph matching network handling graphs with unmatchable outliers on both sides; iii) a predictive network for financial portfolios with continuous constraints. To our knowledge, there exists no one-shot neural solver for these scenarios when they are formulated as satisfiability problems. Source code is available at https://github.com/Thinklab-SJTU/LinSATNet
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LinSATNet:正线性可满足性神经网络
将约束条件编码到神经网络中很有吸引力。本文研究了如何将流行的正线性可满足性引入神经网络。我们基于对经典 Sinkhorn 算法的扩展,提出了第一个可微分的可满足性层,用于联合编码多组边际分布。我们进一步从理论上描述了 Sinkhorn 算法对多个边际分布的收敛特性。与基于强化学习的顺序决策求解器相比,我们展示了通过单次神经网络求解受限(特别是可满足性)问题的技术,包括 i) 无需监督最优解而学习的神经路由求解器;ii) 处理两侧均有不可匹配离群值的部分图匹配网络;iii) 具有连续约束条件的金融投资组合预测网络。据我们所知,当这些场景被表述为可满足性问题时,还没有针对它们的单次神经求解器。源代码见 https://github.com/Thinklab-SJTU/LinSATNet
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