利用量子机器学习对共享单车站点进行聚类:加拿大多伦多案例研究

IF 3.9 Q2 TRANSPORTATION
Amirhossein Nourbakhsh , Mojgan Jadidi , Kyarash Shahriari
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引用次数: 0

摘要

量子机器学习(QML)是一个结合了量子计算(QC)和机器学习(ML)原理的领域。量子计算利用了量子物理学的特性,如叠加和纠缠。要充分发挥这项技术的潜力,还需要进行更多的研究,因为 QML 领域仍处于早期阶段。由于 QC 技术和设备仍在快速发展,因此确定受益最大的用例和应用非常重要。本文研究了 QC(更具体地说,是量子退火(QA))在交通系统中对真实世界数据进行聚类的潜力。以共享单车系统(BSS)为案例,在 QA 计算机上应用聚类模型。本研究的主要贡献在于引入了一种混合模型,通过在 QA 计算机上使用实时数据集,将其作为约束满足问题(CSP)用不同方法求解,从而对共享单车系统中的站点进行聚类。除了实际贡献外,这项研究还通过为输入数据定义与 QC 拓扑(如 Chimera 拓扑)兼容的新拓扑,在计算优化领域取得了理论上的进步。根据动态和静态数据集对 BSS 站点进行实时聚类的目的,实际上是协助决策者更好地管理和尽量减少每个站点自行车不可用的风险,并重新平衡共享自行车。我们采用了三种不同的方法来确定聚类的数量,并应用欧氏、曼哈顿、皮尔逊和斯皮尔曼相似函数对站点进行聚类。评估采用的是幅度 vs. 心率法。结果的台站分布、幅度和心数表明,在实际应用(如 BSS)中使用 QC 进行聚类是有潜力的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering bike sharing stations using Quantum Machine Learning: A case study of Toronto, Canada

Quantum Machine Learning (QML) is a field that combines the principles of Quantum Computing (QC) and Machine Learning (ML). QC works by taking advantage of the properties of quantum physics, such as superposition and entanglement. To fully realize the potential of this technology, more research is necessary, as the field of QML is still in its early stages. Since QC technologies and devices continue to develop quickly, it is important to identify the use cases and applications that benefit the most. This paper investigates the potentials of QC, and more specifically, Quantum Annealing (QA), for clustering real-world data in transportation systems. The Bike Sharing System (BSS) is used as a case study applying a clustering model on QA computers. The main contribution of this research is to introduce a hybrid model to cluster stations in a BSS by solving it as a Constraint Satisfaction Problem (CSP) problem with different methods on a QA computer using a real-time dataset. In addition to the practical contribution, this research also offers theoretical advancements in the field of computational optimization by defining a new topology for the input data that is compatible with QC topology (e.g., Chimera topology). The goal of real-time clustering BSS stations based on dynamic and static datasets is, in fact, to assist decision-makers in better managing and minimizing the risk of bike unavailability at each station and rebalancing bikes shared. Three different methods have been used to determine the number of clusters, and Euclidean, Manhattan, Pearson, and Spearman dissimilarity functions have been applied to cluster the stations. The evaluation is done using the magnitude vs. cardinality approach. The distribution of the stations, magnitude, and cardinality of the results indicate the potential to use QC for clustering for a real-world application, e.g., BSS.

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来源期刊
Transportation Research Interdisciplinary Perspectives
Transportation Research Interdisciplinary Perspectives Engineering-Automotive Engineering
CiteScore
12.90
自引率
0.00%
发文量
185
审稿时长
22 weeks
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