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Forecasting the Direction of Short-Term Crude Oil Price Changes with Genetic-Fuzzy Information Distribution

机译:基于遗传-模糊信息分布的短期原油价格变化方向预测

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摘要

This paper proposes a novel approach to the directional forecasting problem of short-term oil price changes. In this approach, the short-term oil price series is associated with incomplete fuzzy information, and a new fused genetic-fuzzy information distribution method is developed to process such a fuzzy incomplete information set; then a feasible coding method of multidimensional information controlling points is adopted to fit genetic-fuzzy information distribution to time series forecasting. Using the crude oil spot prices of West Texas Intermediate (WTI) and Brent as sample data, the empirical analysis results demonstrate that the novel fused genetic-fuzzy information distribution method statistically outperforms the benchmark of logistic regression model in prediction accuracy. The results indicate that this new approach is effective in direction accuracy.
机译:本文针对短期油价变化的方向性预测问题提出了一种新颖的方法。这种方法将短期油价序列与不完整的模糊信息相关联,并开发了一种新的融合遗传-模糊信息分配方法来处理这种模糊的不完整信息集。然后采用一种可行的多维信息控制点编码方法,使遗传模糊信息分布适合时间序列预测。以西德克萨斯中质原油(WTI)和布伦特原油现货价格为样本数据,经验分析结果表明,该新型融合遗传-模糊信息分配方法在预测准确性上在统计上优于逻辑回归模型的基准。结果表明,这种新方法在方向精度方面是有效的。

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