区间值直觉模糊认知图用于股指预测

P. Hájek, Ondřej Procházka, Wojciech Froelich
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引用次数: 5

摘要

在时间序列预测的一些应用中,不需要精确的知识。在这些情况下,用区间逼近时间序列就足够了,即区间值时间序列(ITS)。本文提出了一种预测单变量ITS的新方法。本文的理论贡献之一是建立了基于模糊认知图的预测模型。我们采用区间值直觉模糊集作为模糊集的概念来代替标准模糊模型中使用的模糊集。通过这种方法,我们得到区间值直觉模糊认知图(ivi - fcm),并将其用于智能交通的预测。为了验证ivi - fcm,我们将其应用于预测由纳斯达克100指数的日最小值和最大值组成的ITS。实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interval-valued intuitionistic fuzzy cognitive maps for stock index forecasting
There are several applications of time series fore-casting for which accurate knowledge of it is not required. In those cases it is enough to deal with the approximation of time series by intervals i.e. interval-valued time series (ITS). In this paper we propose a new method for the forecasting of univariate ITS. A part of the theoretical contribution of the paper is the development of the forecasting model which is based on fuzzy cognitive maps (FCMs). Instead of fuzzy sets used in standard FCMs we apply interval-valued intuitionistic fuzzy sets as their concepts. In this way we get interval-valued intuitionistic fuzzy cognitive maps (IVI-FCMs) which we use for the forecasting of ITS. To validate IVI-FCMs we apply them for the forecasting of the ITS made up by the daily minima and maxima of Nasdaq-100 stock index. Experimental evaluation proved high efficiency of the proposed approach.
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