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Model Agnostic Solution of CSPs via Deep Learning: A Preliminary Study

机译:通过深度学习对CSP进行模型不可知的解决方案:初步研究

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Deep Neural Networks (DNNs) have been shaking the AI scene, for their ability to excel at Machine Learning tasks without relying on complex, hand-crafted, features. Here, we probe whether a DNN can learn how to construct solutions of a CSP, without any explicit symbolic information about the problem constraints. We train a DNN to extend a feasible solution by making a single, globally consistent, variable assignment. The training is done over intermediate steps of the construction of feasible solutions. From a scientific standpoint, we are interested in whether a DNN can learn the structure of a combinatorial problem, even when trained on (arbitrarily chosen) construction sequences of feasible solutions. In practice, the network could also be used to guide a search process, e.g. to take into account (soft) constraints that are implicit in past solutions or hard to capture in a traditional declarative model. This research line is still at an early stage, and a number of complex issues remain open. Nevertheless, we already have intriguing results on the classical Partial Latin Square and N-Queen completion problems.
机译:深度神经网络(DNN)一直在动摇AI领域,因为它们能够在不依赖复杂的手工功能的情况下出色地完成机器学习任务。在这里,我们探讨了DNN是否可以学习如何构造CSP解决方案,而无需任何有关问题约束的明确符号信息。我们训练DNN通过进行单个全局一致的变量分配来扩展可行的解决方案。培训是在构建可行解决方案的中间步骤上进行的。从科学的角度来看,我们对DNN是否可以学习组合问题的结构感兴趣,即使在对(任意选择的)可行解的构造序列进行了训练时也是如此。在实践中,该网络还可以用于指导搜索过程,例如搜索。考虑到过去解决方案中隐含的或传统声明式模型中难以捕获的(软)约束。该研究线仍处于早期阶段,许多复杂的问题仍未解决。尽管如此,我们已经在经典的部分拉丁广场和N-皇后完成问题上获得了有趣的结果。

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