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首页> 外文期刊>Journal of the royal statistical society >Factor-augmented Bayesian cointegration models: a case-study on the soybean crush spread
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Factor-augmented Bayesian cointegration models: a case-study on the soybean crush spread

机译:因子增强的贝叶斯协整模型:大豆压榨酱的案例研究

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摘要

We investigate how vector auto-regressive models can be used to study the soybean crush spread. By crush spread we mean a time series marking the difference between a weighted combination of the value of soymeal and soyoil to the value of the original soybeans. Commodity industry practitioners often use fixed prescribed values for these weights, which do not take into account any time-varying effects or any financial-market-based dynamic features that can be discerned from futures price data. We address this issue by proposing an appropriate time series model with cointegration. Our model consists of an extension of a particular vector auto-regressive model that is used widely in econometrics. Our extensions are inspired by the problem at hand and allow for a time-varying covariance structure and a time-varying intercept to account for seasonality. To perform Bayesian inference we design an efficient Markov chain Monte Carlo algorithm, which is based on the approach of Koop and his co-workerss. Our investigations on prices obtained from futures contracts data confirmed that the added features in our model are useful in reliable statistical determination of the crush spread. Although the interest here is on the soybean crush spread, our approach is applicable also to other tradable spreads such as oil and energy-based crack and spark spreads.
机译:我们研究如何使用向量自回归模型来研究大豆压榨传播。压榨涂抹酱是指一个时间序列,用于标记豆粕和豆油的加权组合与原始大豆的加权组合之间的差异。商品行业从业人员通常为这些权重使用固定的规定值,而这些规定值未考虑到可以从期货价格数据中识别出的任何随时间变化的影响或任何基于金融市场的动态特征。我们通过提出一个合适的时间序列模型和协整关系来解决这个问题。我们的模型由特定的矢量自回归模型的扩展组成,该模型在计量经济学中得到了广泛的使用。我们的扩展程序受到当前问题的启发,并允许时变协方差结构和时变截距来考虑季节性。为了进行贝叶斯推理,我们设计了一种有效的马尔可夫链蒙特卡洛算法,该算法基于库普及其同事的方法。我们对从期货合约数据中获得的价格进行的研究证实,我们模型中的新增功能可用于可靠地确定压差的统计值。尽管这里关注的是大豆压榨点差,但我们的方法也适用于其他可交易点差,例如基于石油和能源的裂解点差和火花点差。

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