基于支持向量机和粒度计算的时间序列波动率预测

J. Robotics Pub Date : 2022-04-16 DOI:10.1155/2022/4163992
Yuan Yang, Xu Ma
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引用次数: 0

摘要

随着信息技术的发展,经济管理领域产生并存储了大量的时间序列数据,利用数据挖掘算法可以挖掘数据中潜在的、有价值的知识和信息,为管理和决策活动提供支持。本文从时间轴和理论域两方面提出了三种不同的时间序列信息造粒方法:基于波动点的时间序列时间轴信息造粒方法和基于云模型的时间序列时间轴信息造粒方法,以及基于理论域信息造粒的模糊时间序列预测方法。同时,将粒度计算的粒化思想引入时间序列分析,通过时间序列的信息粒化将原高维时间序列粒化为低维粒度时间序列,构建的信息粒能够描绘和反映原时间序列数据的结构特征,实现高效降维,为后续的数据挖掘工作奠定基础。最后,对决策树的粒度进行分析,并针对每个粒度设计不同的支持向量机分类器,构建全局多分类模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Machine and Granular Computing Based Time Series Volatility Prediction
With the development of information technology, a large amount of time-series data is generated and stored in the field of economic management, and the potential and valuable knowledge and information in the data can be mined to support management and decision-making activities by using data mining algorithms. In this paper, three different time-series information granulation methods are proposed for time-series information granulation from both time axis and theoretical domain: time-series time-axis information granulation method based on fluctuation point and time-series time-axis information granulation method based on cloud model and fuzzy time-series prediction method based on theoretical domain information granulation. At the same time, the granulation idea of grain computing is introduced into time-series analysis, and the original high-dimensional time series is granulated into low-dimensional grain time series by information granulation of time series, and the constructed information grains can portray and reflect the structural characteristics of the original time-series data, to realize efficient dimensionality reduction and lay the foundation for the subsequent data mining work. Finally, the grains of the decision tree are analyzed, and different support vector machine classifiers corresponding to each grain are designed to construct a global multiclassification model.
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