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Optimization of combined time series methods to forecast the demand for coffee in Brazil: A new approach using Normal Boundary Intersection coupled with mixture designs of experiments and rotated factor scores

机译:优化组合时间序列方法以预测巴西的咖啡需求:一种使用“正常边界相交”的新方法以及实验和旋转因子得分的混合设计

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This paper proposed a new multi-objective approach to find the optimal set of weight's combination of forecasts that were jointly efficient with respect to various performance and precision metrics. For this, the residues' series of each previously selected forecasts methods were calculated and, to combine them through of a weighted average, several sets of weights were obtained using Simplex - Lattice Design {m,q}. Then, several metrics were calculated for each combined residues' series. After, Principal Components Factor Analysis (PCFA) was used for extracting a small number series' factor scores to represent the metrics selected with minimal loss of information. The extracted series' factor scores were mathematically modeled with Mixture Design of Experiments (DOE-M). Normal Boundary Intersection method (NBI) was applied to perform joint optimization of these objective functions, allowing to obtain different optimal weights set and the Pareto frontier construction. As selection criteria of the best optimal weights' set were used the Shannon's Entropy Index and Global Percentage Error (GPE). Here, these steps were successfully applied to predict coffee demand in Brazil as a case study. In order to test the applicability and feasibility of the proposed method based on distinct time series, the coffees Brazilian production and exportation were also foreseen by new method. Besides, the simulated series available in Montgomery et al. (2008) were also used to test the viability of the new method. The results showed that the proposed approach, named of FA-NBI combination method, can be successfully employed to find the optimal weights of a forecasts' combination.
机译:本文提出了一种新的多目标方法,以找到预测的权重组合的最佳集合,这些集合在各种性能和精度指标方面共同有效。为此,计算了每个先前选择的预测方法的残差系列,并通过加权平均值将其合并,使用Simplex-Lattice Design {m,q}获得了几组权重。然后,为每个合并的残基系列计算了几个度量。之后,使用主成分因子分析(PCFA)提取少量序列的因子得分,以表示选择的指标,且信息损失最少。使用实验混合设计(DOE-M)对提取的系列因子得分进行数学建模。使用法向边界相交法(NBI)对这些目标函数进行联合优化,从而获得不同的最佳权重集和帕累托边界构造。作为最佳最佳权重集合的选择标准,使用了香农熵指数和整体百分比误差(GPE)。在这里,作为案例研究,这些步骤已成功应用于预测巴西的咖啡需求。为了检验该方法在不同时间序列上的适用性和可行性,还预言了新方法对巴西咖啡的生产和出口的影响。此外,蒙哥马利等人可用的模拟系列。 (2008)也被用来测试新方法的可行性。结果表明,该方法被称为FA-NBI组合方法,可以成功地用于找到预测组合的最佳权重。

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