在线预测在线TSP在线

IF 0.6 4区 计算机科学 Q4 COMPUTER SCIENCE, THEORY & METHODS International Journal of Foundations of Computer Science Pub Date : 2023-07-25 DOI:10.1142/s0129054123470020
Jian-Xi Shao, Ya-Chun Liang, Chung-Shou Liao
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引用次数: 0

摘要

随着学习增强算法的发展受到越来越多的关注,我们从这种学习方法的角度重新审视经典的在线旅行推销员问题(OLTSP)。一个学习增强的在线算法,或者简单地说,一个带预测的在线算法,考虑如何通过预测未来请求的信息,例如它们在OLTSP中的释放时间或位置,在理论上保证的情况下提高其竞争性能。在本研究中,我们研究了真实线上的OLTSP,受到智能仓库中包裹拾取问题的激励,其目的是为服务器(例如Kiva机器人)调度路线,从原点开始,服务所有在线请求并返回原点,从而使完成时间最小化。每个在线请求都随时间在真实线上释放,服务器以单位速度沿在线来回移动。我们主要关注热心算法,这是OLTSP的一种特殊类型的在线算法,如果仍然有未服务的请求,它永远不允许服务器等待,并利用一种特定的预测策略,称为在线预测,它以在线方式一个接一个地进行预测。为了确保更好的竞争表现,我们特别探讨了限制这种预测能力的最坏情况。基于讨论,我们假设在线预测保证有用,并设计了一个具有[公式:见文]-鲁棒性和[公式:见文]-一致性的学习增强算法,[公式:见文]的上下限,其中[公式:见文]和[公式:见文]表明预测误差是足够小的常数。此外,我们还进行了数值实验来验证所提出算法的实际有效性。
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Online Predictions for Online TSP on the Line
With a rapidly growing attention on the development of learning-augmented algorithms, we revisit the classical online traveling salesman problem (OLTSP) from the perspective of such learning approaches. A learning-augmented online algorithm, or simply an online algorithm with predictions, considers how to improve its competitive performance with theoretical guarantees by forecasting the information of future requests, e.g., their release time or locations in the OLTSP. In this study, we investigate the OLTSP on the real line, motivated by the parcel picking problem in a smart warehouse, which aims at scheduling a route for a server (saying, a Kiva robot), starting at the origin, serving all online requests and returning to the origin such that the completion time is minimized. Each online request is released over time on the real line and the server moves back and forth along the line with unit speed. We mainly focus on zealous algorithms, a special type of online algorithms for the OLTSP which never allow the sever to wait if there are still unserved requests, and exploit a specific forecasting strategy, called online predictions, which makes a sequence of predictions one by one in an online manner. In order to ensure better competitive performance, we particularly explore the worst-case scenarios that restrict the power of such predictions. Based on the discussion, we make an assumption in which online predictions are guaranteed to be useful, and devise a learning-augmented algorithm with [Formula: see text]-robustness and [Formula: see text]-consistency, [Formula: see text], comparing to the previous lower bound of [Formula: see text], where [Formula: see text] and [Formula: see text] which indicate prediction errors are sufficiently small constants. Moreover, we also conduct numerical experiments to demonstrate the practical effectiveness of the proposed algorithm.
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来源期刊
International Journal of Foundations of Computer Science
International Journal of Foundations of Computer Science 工程技术-计算机:理论方法
CiteScore
1.60
自引率
12.50%
发文量
63
审稿时长
3 months
期刊介绍: The International Journal of Foundations of Computer Science is a bimonthly journal that publishes articles which contribute new theoretical results in all areas of the foundations of computer science. The theoretical and mathematical aspects covered include: - Algebraic theory of computing and formal systems - Algorithm and system implementation issues - Approximation, probabilistic, and randomized algorithms - Automata and formal languages - Automated deduction - Combinatorics and graph theory - Complexity theory - Computational biology and bioinformatics - Cryptography - Database theory - Data structures - Design and analysis of algorithms - DNA computing - Foundations of computer security - Foundations of high-performance computing
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