为最短路径成本预测提取多目标多图特征:基于统计还是基于学习?

Songwei Liu, Xinwei Wang, Michal Weiszer, Jun Chen
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引用次数: 0

摘要

高效的机场空侧地面移动(AAGM)是城市空中交通成功运行的关键。最近的研究引入了多目标多图(MOMGs)作为制定 AAGM 的概念原型。快速计算最短路径成本对于在 MOMGs 上进行算法启发式搜索至关重要,然而,以前的工作主要集中在单目标简单图(SOSGs)上,将成本查询视为搜索问题,未能保持较低的计算时间和存储复杂度。本文集中讨论了概念原型 MOMG,并研究了其节点特征提取,这为高效预测最短路径成本奠定了基础。本文采用了两种提取方法并进行了比较:一种是基于统计的方法,它从图论原理中总结出 22 种节点物理模式;另一种是基于学习的方法,它采用节点嵌入技术将图结构编码到一个判别向量空间中。前者能有效评估节点物理模式并揭示其对距离预测的重要性,后者则为仅能处理 SOSGs 的节点嵌入算法提供了处理多图的新方法。我们采用了三种回归模型来预测最短路径成本,以展示每种模型的性能。我们在随机生成的基准 MOMGs 上进行的实验表明:(i) 由于严重高估,基于统计的方法在描述小距离值时表现不佳;(ii) 与基于完整模式集的方法相比,基本物理模式的子集可以达到相当或稍高的预测精度;(iii) 基于学习的方法始终优于基于统计的方法,同时保持了具有竞争力的计算复杂度水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Extracting multi-objective multigraph features for the shortest path cost prediction: Statistics-based or learning-based?

Extracting multi-objective multigraph features for the shortest path cost prediction: Statistics-based or learning-based?

Efficient airport airside ground movement (AAGM) is key to successful operations of urban air mobility. Recent studies have introduced the use of multi-objective multigraphs (MOMGs) as the conceptual prototype to formulate AAGM. Swift calculation of the shortest path costs is crucial for the algorithmic heuristic search on MOMGs, however, previous work chiefly focused on single-objective simple graphs (SOSGs), treated cost enquires as search problems, and failed to keep a low level of computational time and storage complexity. This paper concentrates on the conceptual prototype MOMG, and investigates its node feature extraction, which lays the foundation for efficient prediction of shortest path costs. Two extraction methods are implemented and compared: a statistics-based method that summarises 22 node physical patterns from graph theory principles, and a learning-based method that employs node embedding technique to encode graph structures into a discriminative vector space. The former method can effectively evaluate the node physical patterns and reveals their individual importance for distance prediction, while the latter provides novel practices on processing multigraphs for node embedding algorithms that can merely handle SOSGs. Three regression models are applied to predict the shortest path costs to demonstrate the performance of each. Our experiments on randomly generated benchmark MOMGs show that (i) the statistics-based method underperforms on characterising small distance values due to severe overestimation; (ii) A subset of essential physical patterns can achieve comparable or slightly better prediction accuracy than that based on a complete set of patterns; and (iii) the learning-based method consistently outperforms the statistics-based method, while maintaining a competitive level of computational complexity.

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