传统GM灰色预测理论的再研究(1,1)- 1

IF 1 4区 工程技术 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Grey System Pub Date : 2008-09-01 DOI:10.30016/JGS.200809.0007
John H. Wu, Chia-Yi Chien, Hsiao-Mei Liu, Furong Chang
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引用次数: 2

摘要

传统灰色预测理论的核心是背景值和类比。在传统的GM(1,1)模型中,背景值是一个被限制在一个点上的平均值,类比过于有限而难以接受,可能只适合单调递增或递减的情况。因此,对背景值引入线性假设和最优alpha。此外,基于空间视角,构建误差分析,提高对该模型的理解。算例对比表明,改进后的方法可以减小RMSE评价的预测误差。此外,这是系列论文的第一部分,未来还将提出逐步修改以增强GM(1,1)的应用。
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Restudy on Traditional Grey Forecasting Theory of GM (1,1)-I
The essences of traditional grey forecasting theory are background value and class ratio. In traditional GM(1,1) model, the background value is an average one which is restricted on a point and class ratio is too limited to be accepted that may only be agreeable to monotone increasing or decreasing cases. Therefore, a linear assumption and an optimal alpha are introduced for background value. Besides, base on spatial perspective, an error analysis will be constructed to improve comprehension of this model. A comparison of example indicates that the modified approach is probably to reduce forecasting error by RMSE evaluation. Besides, this is the first part of series paper and gradual modifications will also be proposed to enhance applications of GM(1,1) in the future.
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来源期刊
Journal of Grey System
Journal of Grey System 数学-数学跨学科应用
CiteScore
2.40
自引率
43.80%
发文量
0
审稿时长
1.5 months
期刊介绍: The journal is a forum of the highest professional quality for both scientists and practitioners to exchange ideas and publish new discoveries on a vast array of topics and issues in grey system. It aims to bring forth anything from either innovative to known theories or practical applications in grey system. It provides everyone opportunities to present, criticize, and discuss their findings and ideas with others. A number of areas of particular interest (but not limited) are listed as follows: Grey mathematics- Generator of Grey Sequences- Grey Incidence Analysis Models- Grey Clustering Evaluation Models- Grey Prediction Models- Grey Decision Making Models- Grey Programming Models- Grey Input and Output Models- Grey Control- Grey Game- Practical Applications.
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