BriefGPT.xyz
Jan, 2019
递归神经网络样本复杂度界限及其在组合图问题中的应用
Sample Complexity Bounds for Recurrent Neural Networks with Application to Combinatorial Graph Problems
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Nil-Jana Akpinar, Bernhard Kratzwald, Stefan Feuerriegel
TL;DR
本文探讨了使用循环神经网络学习解决实值组合图问题的可行性,提出了用于上限样本复杂度的理论框架,并证明了单层和多层循环神经网络可以在多项式数量级的样本数下对于最大顶点个数为n的图进行学习。
Abstract
learning
to predict solutions to real-valued
combinatorial graph problems
promises efficient approximations. As demonstrated based on the NP-hard edge clique cover number,
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