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A hybrid commodity price-forecasting model applied to the sugar-alcohol sector.

机译:一种混合商品价格预测模型应用于糖醇行业。

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摘要

Accurate price forecasting for agricultural commodities can have significant decision-making implications for suppliers, especially those of biofuels, where the agriculture and energy sectors intersect. Environmental pressures and high oil prices affect demand for biofuels and have reignited the discussion about effects on food prices. Suppliers in the sugar-alcohol sector need to decide the ideal proportion of ethanol and sugar to optimise their financial strategy. Prices can be affected by exogenous factors, such as exchange rates and interest rates, as well as non-observable variables like the convenience yield, which is related to supply shortages. The literature generally uses two approaches: artificial neural networks (ANNs), which are recognised as being in the forefront of exogenous-variable analysis, and stochastic models such as the Kalman filter, which is able to account for non-observable variables. This article proposes a hybrid model for forecasting the prices of agricultural commodities that is built upon both approaches and is applied to forecast the price of sugar. The Kalman filter considers the structure of the stochastic process that describes the evolution of prices. Neural networks allow variables that can impact asset prices in an indirect, nonlinear way, what cannot be incorporated easily into traditional econometric models.
机译:对农产品的准确价格预测可能会对供应商,尤其是农业和能源部门相交的生物燃料供应商的决策产生重大影响。环境压力和高油价影响了对生物燃料的需求,并重新点燃了有关对食品价格影响的讨论。糖醇行业的供应商需要确定乙醇和糖的理想比例,以优化其财务策略。价格可能受到诸如汇率和利率之类的外在因素以及与供应短缺有关的不可观察变量(如便利收益率)的影响。文献通常使用两种方法:人工神经网络(ANN),被认为是外生变量分析的最前沿;以及随机模型,例如卡尔曼滤波器,它能够解决不可观察的变量。本文提出了一种基于两种方法的用于预测农产品价格的混合模型,并将其用于预测糖的价格。卡尔曼滤波器考虑了描述价格演变的随机过程的结构。神经网络允许变量以间接的,非线性的方式影响资产价格,而这些变量却无法轻易地纳入传统的计量经济学模型中。

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