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A comparison of heuristic best-first algorithms for bicriterion shortest path problems

机译:双向最短路径启发式最佳优先算法的比较

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摘要

A variety of algorithms have been proposed to solve the bicriterion shortest path problem. This article analyzes and compares the performance of three best-first (label-setting) algorithms that accept heuristic information to improve efficiency. These are NAMOA*, MOA*, and Tung & Chew's algorithm (TC). A set of experiments explores the impact of heuristic information in search efficiency, and the relative performance of the algorithms. The analysis reveals that NAMOA* is the best option for difficult problems. Its time performance can benefit considerably from heuristic information, though not in all cases. The performance of TC is similar but somewhat worse. However, the time performance of MOA* is found to degrade considerably with the use of heuristic information in most cases. Explanations are provided for these phenomena.
机译:已经提出了多种算法来解决双准则最短路径问题。本文分析并比较了三种最佳优先(标签设置)算法的性能,这些算法接受启发式信息以提高效率。它们是NAMOA *,MOA *和Tung&Chew的算法(TC)。一组实验探讨了启发式信息对搜索效率的影响以及算法的相对性能。分析表明,NAMOA *是解决难题的最佳选择。尽管并非在所有情况下,其时间性能都可以从启发式信息中受益匪浅。 TC的性能类似,但有些差。但是,在大多数情况下,发现使用启发式信息会大大降低MOA *的时间性能。提供了有关这些现象的说明。

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