用于时空交通数据估算的具有自动秩确定功能的贝叶斯张量环分解模型

IF 4.4 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Applied Mathematical Modelling Pub Date : 2024-08-24 DOI:10.1016/j.apm.2024.115654
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引用次数: 0

摘要

最近,张量因式分解模型在解决交通数据估算问题上显示出了优越性。然而,这些方法学习交通数据相关性的能力有限,当预定义等级较大而可用数据有限时,容易出现过拟合。本文提出了一种贝叶斯张量环分解模型,利用变式贝叶斯推理来求解模型。首先,利用具有增强表示能力的张量环分解将部分观测数据分解为因子张量,以捕捉交通数据中的相关性。其次,为了解决在数据可用性有限的情况下选择大的预定义等级的问题,提出了一种自动确定张量环等级的机制。该机制可通过在每次迭代中修剪核心因子的零分量水平切片和正面切片来实现,从而减少核心因子的维数,进而降低张量环等级。最后,在合成数据和四种不同类型的真实交通数据集上进行的大量实验证明了所提模型的优越性。在广州数据集中,与最具竞争力的基线模型相比,平均绝对百分比误差的最大改进幅度可达 15%。
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A Bayesian tensor ring decomposition model with automatic rank determination for spatiotemporal traffic data imputation

Recently, tensor factorization models have shown superiority in solving traffic data imputation problem. However, these approaches have a limited ability to learn traffic data correlations and are easy to overfit when the pre-defined rank is large and the available data is limited. In this paper, we propose a Bayesian tensor ring decomposition model, utilizing Variational Bayesian Inference to solve the model. Firstly, tensor ring decomposition with an enhanced representational capability is used to decompose partially observed data into factor tensors to capture the correlation in traffic data. Secondly, to address the issue of selecting large pre-defined rank when data availability is limited, an automatic determination mechanism of tensor ring ranks is proposed. This mechanism can be implemented by pruning the zero-component horizontal and frontal slices of the core factors in each iteration, reducing the dimensions of the core factors and consequently lowering the tensor ring ranks. Finally, extensive experiments on synthetic data and four diverse types of real-world traffic datasets demonstrate the superiority of the proposed model. In the Guangzhou dataset, the maximum improvement in Mean Absolute Percentage Error can reach 15 % compared to the most competitive baseline model.

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来源期刊
Applied Mathematical Modelling
Applied Mathematical Modelling 数学-工程:综合
CiteScore
9.80
自引率
8.00%
发文量
508
审稿时长
43 days
期刊介绍: Applied Mathematical Modelling focuses on research related to the mathematical modelling of engineering and environmental processes, manufacturing, and industrial systems. A significant emerging area of research activity involves multiphysics processes, and contributions in this area are particularly encouraged. This influential publication covers a wide spectrum of subjects including heat transfer, fluid mechanics, CFD, and transport phenomena; solid mechanics and mechanics of metals; electromagnets and MHD; reliability modelling and system optimization; finite volume, finite element, and boundary element procedures; modelling of inventory, industrial, manufacturing and logistics systems for viable decision making; civil engineering systems and structures; mineral and energy resources; relevant software engineering issues associated with CAD and CAE; and materials and metallurgical engineering. Applied Mathematical Modelling is primarily interested in papers developing increased insights into real-world problems through novel mathematical modelling, novel applications or a combination of these. Papers employing existing numerical techniques must demonstrate sufficient novelty in the solution of practical problems. Papers on fuzzy logic in decision-making or purely financial mathematics are normally not considered. Research on fractional differential equations, bifurcation, and numerical methods needs to include practical examples. Population dynamics must solve realistic scenarios. Papers in the area of logistics and business modelling should demonstrate meaningful managerial insight. Submissions with no real-world application will not be considered.
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