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HEURISTIC BIVARIATE FORECASTING MODEL OF MULTI-ATTRIBUTE FUZZY TIME SERIES BASED ON FUZZY CLUSTERING

机译:基于模糊聚类的多属性模糊时间序列启发式双变量预测模型

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摘要

Fuzzy time series has been applied to forecast various domain problems because of its capability to deal with vagueness and incompleteness inherent in data. However, most existing fuzzy time series models cannot cope with multi-attribute time series and remain too subjective in the partition of the universe of discourse. Moreover, these models do not consider the trend factor and the corresponding external time series, which are highly relevant to target series. In the current paper, a heuristic bivariate model is proposed to improve forecasting accuracy, and the proposed model applies fuzzy c-means clustering algorithm to process multi-attribute fuzzy time series and to partition the universe of discourse. Meanwhile, the trend predictors are extracted in the training phase and utilized to select the order of fuzzy relations in the testing phase. Finally, the proper full use of the external series to assist forecasting is discussed. The performance of the proposed model is tested using actual timeseries including the enrollments at the University of Alabama, the Taiwan Stock Exchange Capitalization Weighted Stock Index (TAIEX) and a sensor dataset. The experimental results show that the proposed model can be utilized for multi-attribute time series and significantly improves the average MAER to 1.19% when compared with other forecasting models.
机译:由于模糊时间序列具有处理数据固有的模糊性和不完整性的能力,因此已被用于预测各种领域的问题。但是,大多数现有的模糊时间序列模型无法应对多属性时间序列,并且在话语领域的划分中仍然过于主观。此外,这些模型没有考虑与目标序列高度相关的趋势因子和相应的外部时间序列。本文提出了一种启发式双变量模型,以提高预测的准确性,该模型采用模糊c均值聚类算法处理多属性模糊时间序列并划分话语范围。同时,在训练阶段提取趋势预测因子,并在测试阶段将其用于选择模糊关系的顺序。最后,讨论了如何充分利用外部序列来辅助预测。使用实际时间序列(包括在阿拉巴马大学的入学率,台湾证券交易所资本化加权股票指数(TAIEX)和传感器数据集)对建议模型的性能进行了测试。实验结果表明,与其他预测模型相比,该模型可用于多属性时间序列,并将平均MAER提高到1.19%。

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