Boosting graph search with attention network for solving the general orienteering problem

Zongtao Liu , Wei Dong , Chaoliang Wang , Haoqingzi Shen , Gang Sun , Qun jiang , Quanjin Tao , Yang Yang
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引用次数: 0

Abstract

Recently, several studies explore to use neural networks(NNs) to solve different routing problems, which is an auspicious direction. These studies usually design an encoder–decoder based framework that uses encoder embeddings of nodes and the problem-specific context to iteratively generate node sequence(path), and further optimize the produced result on top, such as a beam search. However, these models are limited to accepting only the coordinates of nodes as input, disregarding the self-referential nature of the studied routing problems, and failing to account for the low reliability of node selection in the initial stages, thereby posing challenges for real-world applications.

In this paper, we take the orienteering problem as an example to tackle these limitations in the previous studies. We propose a novel combination of a variant beam search algorithm and a learned heuristic for solving the general orienteering problem. We acquire the heuristic with an attention network that takes the distances among nodes as input, and learn it via a reinforcement learning framework. The empirical studies show that our method can surpass a wide range of baselines and achieve results iteratively generate the optimal or highly specialized approach.

利用注意力网络促进图搜索,解决一般定向问题
最近,一些研究探索使用神经网络(NN)来解决不同的路由问题,这是一个很好的方向。这些研究通常设计一个基于编码器-解码器的框架,利用节点的编码器嵌入和特定问题的上下文来迭代生成节点序列(路径),并在此基础上进一步优化生成的结果,例如波束搜索。然而,这些模型仅限于接受节点坐标作为输入,忽略了所研究路由问题的自反性,也没有考虑到初始阶段节点选择的低可靠性,从而给实际应用带来了挑战。我们提出了一种新颖的变体波束搜索算法和学习启发式相结合的方法来解决一般定向问题。我们将启发式与以节点间距离为输入的注意力网络相结合,并通过强化学习框架对其进行学习。实证研究表明,我们的方法可以超越各种基线,并取得迭代生成最优或高度专业化方法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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