运用预测组合机制对航运市场进行预测

IF 3.7 3区 工程技术 Q2 TRANSPORTATION Maritime Policy & Management Pub Date : 2021-07-01 DOI:10.1080/03088839.2021.1945698
Ruobin Gao, Jiahui Liu, L. Du, Kum Fai Yuen
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引用次数: 5

摘要

油轮市场的波动性给预测带来了挑战。此外,新造船和二手船价格、定期租船费率和报废价值的不稳定特征使得开发统一的预测框架变得困难。大多数研究人员已经开发了预测模型,并根据特定市场评估其表现。这种狭窄的发展给从业者选择合适的模式带来了困难。由于机器学习的蓬勃发展,许多研究人员正在尝试使用机器学习来提高航运市场的预测准确性。然而,复杂的机器学习模型存在许多超参数,模型的微小变化可能会导致显著的性能下降。本文利用一种预测组合机制,对从航运市场收集的许多时间序列进行预测,包括新造船和二手船价格、报废价值和定期租船费率。组合池中的模型只是线性函数。最后,我们使用三种误差度量和统计测试将它们的性能与传统机器学习模型和naïve预测进行比较。统计检验表明,线性模型组合效果较好。这项研究的结果还表明,复杂的模型不一定能提高预测的准确性。
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Shipping market forecasting by forecast combination mechanism
ABSTRACT The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the volatile characteristics of newbuilding and secondhand ship prices, time charter rates, and scrap values make developing a unified framework of forecasting difficult. Most researchers have developed forecasting models and evaluated their performance based on a specific market. Such narrow development imposes difficulty for practitioners to choose a suitable model. Due to the boom of machine learning, many researchers are trying to boost the forecasting accuracy of shipping markets using machine learning. However, there are many hyper-parameters of the complex machine learning models and a slight variation of the model may cause significant performance degradation. This paper utilizes a forecast combination mechanism to forecast many time series collected from the shipping market, including newbuilding and secondhand ship prices, scrap values, and time charter rates. The models inside the combination pool are just linear functions. Finally, we compare their performance with conventional machine learning models and naïve forecasts using three error metrics and statistical tests. The statistical tests show that the combination of linear models is superior. The findings of this study also indicate that complex models do not boost forecasting accuracy necessarily.
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来源期刊
CiteScore
8.20
自引率
8.60%
发文量
66
期刊介绍: Thirty years ago maritime management decisions were taken on the basis of experience and hunch. Today, the experience is augmented by expert analysis and informed by research findings. Maritime Policy & Management provides the latest findings and analyses, and the opportunity for exchanging views through its Comment Section. A multi-disciplinary and international refereed journal, it brings together papers on the different topics that concern the maritime industry. Emphasis is placed on business, organizational, economic, sociolegal and management topics at port, community, shipping company and shipboard levels. The Journal also provides details of conferences and book reviews.
期刊最新文献
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