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The modeling and prediction of time series based on synergy of high-order fuzzy cognitive map and fuzzy c-means clustering

机译:基于高阶模糊认知图和模糊c均值聚类的协同时间序列建模与预测

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摘要

The time series prediction models based on fuzzy set theory have been widely applied to diverse fields such as enrollments, stocks, weather and etc., as they can handle prediction problem under uncertain circumstances in which data are incomplete or vague. Researchers have presented diverse approaches to support the development of fuzzy time series prediction models. While the existing approaches exhibit two evident shortcomings: one is that they have low efficiency of development, which is hardly applicable in the prediction problem involving large-scale time series, and the other is that fuzzy logical relationships mined in an ad hoc way cannot uncover the global characteristics of time series, which reduces accuracy of the resulting model. In this paper, a novel modeling and prediction approach of time series based on synergy of high-order fuzzy cognitive map (HFCM) and fuzzy c-means clustering is proposed, in which fuzzy c-means clustering algorithm is used to construct information granules, transform original time series into granular time series and generate a structure of HFCM prediction model in an automatic fashion. Subsequently depending on historical data of time series, the HFCM prediction model of time series is completely formed by exploiting PSO algorithm to learn all parameters of one. Finally, the developed HFCM prediction model can realize numeric prediction by performing inference in the granular space. Four benchmark time series data sets with different statistical characteristics coming from different areas are applied to validate the feasibility and effectiveness of the proposed modeling approach. The obtained results clearly show the effectiveness of the approach. The developed HFCM prediction models depend on historical data of time series and is emerged in the form of map, which is simpler, legible and have high-level interpretability. Additionally, the proposed approach also exhibits a clear ability to handle the prediction problem of large-scale time series.
机译:基于模糊集理论的时间序列预测模型已被广泛地应用于诸如入学,库存,天气等各个领域,因为它们可以处理不确定的情况下的预测问题,即数据不完整或模糊不清。研究人员提出了多种方法来支持模糊时间序列预测模型的开发。现有的方法有两个明显的缺点:一是它们的开发效率低,很难应用于涉及大规模时间序列的预测问题;二是以临时方式挖掘的模糊逻辑关系无法发现时间序列的全局特征,这会降低所得模型的准确性。本文提出了一种基于高阶模糊认知图和模糊c均值聚类的协同时间序列建模和预测的新方法,其中采用模糊c均值聚类算法构造信息颗粒,将原始时间序列转换为粒度时间序列,并以自动方式生成HFCM预测模型的结构。随后根据时间序列的历史数据,利用PSO算法学习一个时间序列的所有参数,从而完全形成时间序列的HFCM预测模型。最后,所开发的HFCM预测模型可以通过在粒度空间中进行推断来实现数值预测。应用来自不同地区的具有不同统计特征的四个基准时间序列数据集来验证所提出的建模方法的可行性和有效性。获得的结果清楚地表明了该方法的有效性。所建立的HFCM预测模型依赖于时间序列的历史数据,并且以地图的形式出现,它更简单,易读且具有较高的可解释性。此外,所提出的方法还具有明显的能力来处理大规模时间序列的预测问题。

著录项

  • 来源
    《Knowledge-Based Systems》 |2014年第11期|242-255|共14页
  • 作者单位

    School of Control Science and Engineering, Dalian University of Technology, Dalian City, PR China;

    School of Control Science and Engineering, Dalian University of Technology, Dalian City, PR China;

    School of Control Science and Engineering, Dalian University of Technology, Dalian City, PR China;

    Department of Electrical & Computer Engineering, University of Alberta, Edmonton T6R 2V4 AB, Canada,Department of Electrical and Computer Engineering, Faculty of Engineering, King Abdulaziz University, Jeddah 21589, Saudi Arabia,Systems Research Institute, Polish Academy of Sciences, Warsaw, Poland;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Time series; Modeling; Prediction; Fuzzy cognitive map; Fuzzy c-means clustering; Information granules;

    机译:时间序列;造型;预测;模糊认知图模糊c均值聚类;信息颗粒;

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