利用模糊时间序列模型预测马来西亚-印度尼西亚石油产量和消费量

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
R. Efendi, M. M. Deris
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引用次数: 3

摘要

模糊时间序列已应用于教育、金融经济、能源、交通事故等领域的数据预测。此外,还提出了许多模型来提高预测精度。然而,在模糊时间序列预测中,区间长度调整和样本外预测过程仍然是一个问题,这两个问题在以往的研究中尚未得到明确的研究。本文提出了一种新的数据集区间长度和分区数的调整方法。此外,还讨论了外样本预测的确定问题。以马来西亚和印度尼西亚1965 - 2012年的年产油量(OP)和年产油量(OC)为研究对象,对模糊时间序列和概率时间序列模型的性能进行了评价。结果表明,模糊时间序列模型在预测精度方面优于回归时间序列、指数平滑等概率模型。因此,本文强调了所提出的区间长度在显著降低预测误差方面的作用,以及模糊时间序列模型与概率时间序列模型之间的主要区别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Malaysian-Indonesian Oil Production and Consumption Using Fuzzy Time Series Model
Fuzzy time series has been implemented for data prediction in the various sectors, such as education, finance-economic, energy, traffic accident, others. Moreover, many proposed models have been presented to improve the forecasting accuracy. However, the interval-length adjustment and the out-sample forecast procedure are still issues in fuzzy time series forecasting, where both issues are yet clearly investigated in the previous studies. In this paper, a new adjustment of the interval-length and the partition number of the data set is proposed. Additionally, the determining of the out-sample forecast is also discussed. The yearly oil production (OP) and oil consumption (OC) of Malaysia and Indonesia from 1965 to 2012 are examined to evaluate the performance of fuzzy time series and the probabilistic time series models. The result indicates that the fuzzy time series model is better than the probabilistic models, such as regression time series, exponential smoothing in terms of the forecasting accuracy. This paper thus highlights the effect of the proposed interval length in reducing the forecasting error significantly, as well as the main differences between the fuzzy and probabilistic time series models.
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来源期刊
Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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