cs.AI updates on arXiv.org 10月27日 14:30
神经符号架构解决NP难题研究
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本文提出了一种可微神经符号架构及其损失函数,用于学习解决NP难题。通过新的概率损失函数,模型能同时学习约束和目标函数,实现可审查和补充。实验表明,该方法在Sudoku基准测试和蛋白质设计问题上表现出高效性。

arXiv:2508.20978v2 Announce Type: replace Abstract: In the ongoing quest for hybridizing discrete reasoning with neural nets, there is an increasing interest in neural architectures that can learn how to solve discrete reasoning or optimization problems from natural inputs, a task that Large Language Models seem to struggle with. Objectives: We introduce a differentiable neuro-symbolic architecture and a loss function dedicated to learning how to solve NP-hard reasoning problems. Methods: Our new probabilistic loss allows for learning both the constraints and the objective, thus delivering a complete model that can be scrutinized and completed with side constraints. By pushing the combinatorial solver out of the training loop, our architecture also offers scalable training while exact inference gives access to maximum accuracy. Results: We empirically show that it can efficiently learn how to solve NP-hard reasoning problems from natural inputs. On three variants of the Sudoku benchmark -- symbolic, visual, and many-solution --, our approach requires a fraction of training time of other hybrid methods. On a visual Min-Cut/Max-cut task, it optimizes the regret better than a Decision-Focused-Learning regret-dedicated loss. Finally, it efficiently learns the energy optimization formulation of the large real-world problem of designing proteins.

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神经符号架构 NP难题 概率损失函数 Sudoku基准测试 蛋白质设计
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