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Fuzzy time series forecasting based on fuzzy logical relationships and similarity measures

机译:基于模糊逻辑关系和相似度量的模糊时间序列预测

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In this paper, we propose a new fuzzy time series forecasting method for forecasting the Taiwan Stock Exchange Capitalization Weighted Stock Index (TAIEX) based on fuzzy time series, fuzzy logical relationships, particle swarm optimization techniques, the K-means clustering algorithm, and similarity measures between the subscript of the fuzzy set of the fuzzified historical testing datum on the previous trading day and the subscripts of the fuzzy sets appearing in the current states of the fuzzy logical relationships in the chosen fuzzy logical relationship group. The particle swarm optimization techniques are used to get the optimal partition of the intervals in the universe of discourse. The K-means clustering algorithm is used to cluster the subscripts of the fuzzy sets of the current states of the fuzzy logical relationships to get the cluster center of each cluster and to divide the constructed fuzzy logical relationships into fuzzy logical relationship groups. The experimental results show that the proposed fuzzy forecasting method gets higher forecasting accuracy rates than the existing methods. The advantages of the proposed fuzzy forecasting method is that it uses the particle swarm optimization techniques to get the optimal partition of the intervals in the universe of discourse and uses the K-means clustering algorithm to cluster the subscripts of the fuzzy sets of the current states of the fuzzy logical relationships to get the cluster center of each cluster and to divide the constructed fuzzy logical relationships into fuzzy logical relationship groups for increasing the forecasting accuracy rates. (C) 2015 Elsevier Inc. All rights reserved.
机译:本文提出了一种基于模糊时间序列,模糊逻辑关系,粒子群优化技术,K-means聚类算法和相似度的台湾股票交易所加权股票指数(TAIEX)的模糊时间序列预测新方法。在前一个交易日的模糊历史测试数据的模糊集下标与在所选模糊逻辑关系组中出现在模糊逻辑关系的当前状态中的模糊集下标之间的度量。粒子群优化技术用于获得话语空间中区间的最佳分配。 K-均值聚类算法用于对模糊逻辑关系的当前状态的模糊集的下标进行聚类,以获得每个聚类的聚类中心,并将构造的模糊逻辑关系划分为模糊逻辑关系组。实验结果表明,所提出的模糊预测方法比现有方法具有更高的预测准确率。所提出的模糊预测方法的优点在于,它使用粒子群优化技术来获得语篇空间中区间的最佳划分,并使用K-means聚类算法对当前状态的模糊集的下标进行聚类。利用模糊逻辑关系可以得到每个聚类的聚类中心,并将构造的模糊逻辑关系分为模糊逻辑关系组,以提高预测的准确率。 (C)2015 Elsevier Inc.保留所有权利。

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