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首页> 外文期刊>Journal of supercomputing >Distributed and incremental travelling salesman algorithm on time-evolving graphs
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Distributed and incremental travelling salesman algorithm on time-evolving graphs

机译:分布式和增量旅行推销员算法在时间不断发展的图表

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摘要

Travelling salesman problem (TSP) is a graph problem that has been widely used in many applications, especially for transportation and logistics. Because TSP is a NP hard problem, minimizing the complexity of TSP algorithms is an important problem. Many heuristic algorithms have been proposed to compute the TSP tours of a given static graph. But limited studies have been done on time-evolving graph (TEG) where the graph can change over time due to update events, such as weight changes on edges or vertices. It is a more challenging problem because the speed of TSP computations must be high enough to catch up the graph update frequency. In this paper, we make the very first attempt to minimize the computation time of solving TSP on time-evolving graphs. By exploring parallel computing power and reusing previous computing results, we proposed a distributed and incremental TSP algorithm which can be implemented on vertex-centric parallel graph computing frameworks to efficiently find TSP tours on large changing graphs. Our incremental algorithm can maintain shortest TSP tour with minimum amount of recomputation. Through our experimental evaluation, we have shown incremental TSP algorithm is 98% faster than distributed algorithm.
机译:旅行推销员问题(TSP)是一个广泛应用于许多应用的图表,特别是对于运输和物流。因为TSP是一个NP难题,最小化TSP算法的复杂性是一个重要问题。已经提出了许多启发式算法来计算给定静态图的TSP巡回赛。但是,在时间不断发展的图表(TEG)上已经完成了有限的研究,其中图表可以随着更新事件而随时间变化,例如在边缘或顶点上的重量变化。这是一个更具挑战性问题,因为TSP计算的速度必须足够高,以赶上图形更新频率。在本文中,我们首先尝试最小化求解TSP的计算时间在时间​​不断发展的图形。通过探索并行计算能力并重用先前的计算结果,我们提出了一种分布式和增量TSP算法,可以在以顶点为中心的并行图计算框架上实现,以有效地查找大型更改图表上的TSP Tours。我们的增量算法可以保持最短的重新计算TSP巡回赛。通过我们的实验评估,我们已经显示了增量TSP算法比分布式算法快98%。

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