Comparison of selection and combination strategies for demand forecasting methods

Q3 Engineering
Saymon Galvão Bandeira, S. G. S. Alcalá, Roberto Vita, T. M. G. D. A. Barbosa
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引用次数: 6

Abstract

Porto, Portugal *saymongb@gmail.com, saymongb@hotmail.com Abstract Paper aims: In this study, effective strategies to combine and select forecasting methods are proposed. In the selection strategy, the best performing forecasting method from a pool of methods is selected based on its accuracy, whereas the combination strategies are based on the mean methods’ outputs and on the methods’ accuracy. Originality: Despite the large amount of work in this area, the actual literature lacks of selection and combination strategies of forecasting methods for dealing with intermittent time series. Research method: The included forecasting methods are state-of-the-art approaches applied to industrial and academics forecasting problems. Experiments were performed to evaluate the performance of the proposed strategies using a spare part data set of an industry of elevators and a data set from the M3-Competition. Main findings: The results show that, in most cases, the accuracy of the demand forecasts can be improved when using the proposed selection and combination strategies. Implications for theory and practice : The proposed methodology can be applied to forecasting problems, covering a variety of characteristics (e.g., intermittency, trend). The results reveal that combination strategies have potential application, perform better than state-of-the-art models, and have comparable accuracy in intermittent series. Thus, they can be employed to
需求预测方法的选择与组合策略比较
摘要论文目的:本研究提出了预测方法组合与选择的有效策略。在选择策略中,从方法池中根据其准确性选择表现最好的预测方法,而组合策略则基于平均方法的输出和方法的准确性。原创性:尽管在这方面做了大量的工作,但实际文献中缺乏处理间歇时间序列的预测方法的选择和组合策略。研究方法:所包含的预测方法是应用于工业界和学术界预测问题的最新方法。实验使用电梯行业的备件数据集和M3-Competition的数据集来评估所提出策略的性能。研究结果表明,在大多数情况下,使用所提出的选择和组合策略可以提高需求预测的准确性。对理论和实践的影响:建议的方法可以应用于预测问题,涵盖各种特征(例如,间歇性,趋势)。结果表明,组合策略具有潜在的应用前景,性能优于目前最先进的模型,并且在间歇性序列中具有相当的精度。因此,他们可以被雇用来
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来源期刊
Production
Production Engineering-Industrial and Manufacturing Engineering
CiteScore
3.00
自引率
0.00%
发文量
26
审稿时长
40 weeks
期刊介绍: The Produção Journal (Production Journal), ISSN 0103-6513, is a Brazilian Association of Production Engineering (ABEPRO) publication. It was created in 1990 in order to provide a communication medium for academic articles in the Production Engineering field. Since 2002, the Production Engineering Department of Polytechnic School of the University of São Paulo (PRO/EPUSP) is responsible for the editorial process of Produção Journal, sponsored by Carlos Alberto Vanzolini Foundation (FCAV). Revista Produção has the tradition of eighteen published volumes and Qualis "B2" evaluation by CAPES in the Engineering III area. For Brazilian academic community it is a top journal in Production Engineering field.
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