A hybrid rolling grey framework for short time series modelling

被引:0
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作者
Zhesen Cui
Jinran Wu
Zhe Ding
Qibin Duan
Wei Lian
Yang Yang
Taoyun Cao
机构
[1] Changzhi University,Department of Computer Science
[2] Queensland University of Technology,School of Mathematical Sciences
[3] Queensland University of Technology,School of Computer Science
[4] Nanjing University of Posts and Telecommunication,College of Automation and College of Artificial Intelligence
[5] Guangdong University of Finance and Economics,School of Statistics and Mathematics
来源
关键词
Short time series; Rolling mechanism; Grey model; Meta-heuristic optimization algorithms; Forecasting;
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中图分类号
学科分类号
摘要
Time series modelling is gaining spectacular popularity in the prediction process of decision making, with applications including real-world management and engineering. However, for short time series, prediction has to face unavoidable limitation for modelling extremely complex systems. It has to apply inadequate and incomplete data from short time to predict unknown observations. With such limited data source, existing techniques, such as statistical modelling or machine learning methods, fail to predict short time series effectively. To address this problem, this paper provides a global framework for short time series modelling predictions, integrating the rolling mechanism, grey model, and meta-heuristic optimization algorithms. In addition, dragonfly algorithm and whale optimization algorithm are investigated and deployed to optimize the framework by enhancing its predicting accuracy with less computational costs. To verify the performance of the proposed framework, three industrial cases are introduced as simulation experiments in this paper. Experimental results confirm that the framework solves corresponding short time series modelling predictions with greater accuracy and speed than the standard GM(1,1) models. The source codes of this framework are available at: https://github.com/zhesencui/HybridRollingGreyFramework.git.
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页码:11339 / 11353
页数:14
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